예제 #1
0
    def comp_smin(self, lepconep4, met, jets, bjets, wjets):
        self.blank_p4 = op.construct(
            "ROOT::Math::LorentzVector<ROOT::Math::PtEtaPhiM4D<float> >",
            ([op.c_float(0.),
              op.c_float(0.),
              op.c_float(0.),
              op.c_float(0.)]))
        #vis = op.multiSwitch((op.rng_len(jets) >= 4, bjets[0].p4+bjets[1].p4+wjets[0].p4+wjets[1].p4+lep.p4),
        #                     (op.rng_len(jets) == 3, bjets[0].p4+bjets[1].p4+wjets[0].p4+lep.p4),
        #                     op.construct("ROOT::Math::LorentzVector<ROOT::Math::PtEtaPhiM4D<float> >", (op.c_float(0.),
        #                                                                                                 op.c_float(0.),
        #                                                                                                 op.c_float(0.),
        #                                                                                                 op.c_float(0.))))
        vis = op.rng_sum(
            bjets, (lambda bj: bj.p4), start=self.blank_p4) + op.rng_sum(
                wjets, (lambda wj: wj.p4), start=self.blank_p4) + lepconep4

        vis_pt = vis.Pt()
        vis_m = vis.M()
        vis_et = op.sqrt(op.pow(vis_m, 2) + op.pow(vis_pt, 2))
        met_et = met.p4.E()
        return op.sqrt(
            op.pow(vis_m, 2) + 2 *
            (vis_et * met_et -
             (vis.Px() * met.p4.Px() + vis.Py() * met.p4.Py())))
예제 #2
0
def MakeExtraMETPlots(self, sel, lepton, met, uname, suffix):
    binScaling = 1
    plots = []
    for key in sel.keys():

        plots.append(
            Plot.make1D("{0}_{1}_{2}_MET_pt".format(uname, key, suffix),
                        met.pt,
                        sel.get(key),
                        EqB(60 // binScaling, 0., 600.),
                        title="MET p_{T} [GeV]",
                        plotopts=utils.getOpts(uname, **{"log-y": False})))
        plots.append(
            Plot.make1D("{0}_{1}_{2}_MET_phi".format(uname, key, suffix),
                        met.phi,
                        sel.get(key),
                        EqB(60 // binScaling, -3.1416, 3.1416),
                        title="MET #phi",
                        plotopts=utils.getOpts(uname, **{"log-y": False})))
        plots.append(
            Plot.make1D("{0}_{1}_{2}_MET_eta".format(uname, key, suffix),
                        met.phi,
                        sel.get(key),
                        EqB(60 // binScaling, -2.4, 2.4),
                        title="MET #eta",
                        plotopts=utils.getOpts(uname, **{"log-y": False})))

        for i in range(2):
            plots.append(
                Plot.make1D(
                    f"{uname}_{key}_{suffix}_MET_lep{i+1}_deltaPhi".format(
                        uname=uname, key=key, suffix=suffix),
                    op.Phi_mpi_pi(lepton[i].phi - met.phi),
                    sel.get(key),
                    EqB(60 // binScaling, -3.1416, 3.1416),
                    title="#Delta #phi (lepton, MET)",
                    plotopts=utils.getOpts(uname, **{"log-y": False})))

            MT = op.sqrt(
                2. * met.pt * lepton[i].p4.Pt() *
                (1. - op.cos(op.Phi_mpi_pi(met.phi - lepton[i].p4.Phi()))))
            plots.append(
                Plot.make1D(f"{uname}_{key}_{suffix}_MET_MT_lep{i+1}".format(
                    uname=uname, key=key, suffix=suffix),
                            MT,
                            sel.get(key),
                            EqB(60 // binScaling, 0., 600.),
                            title="Lepton M_{T} [GeV]",
                            plotopts=utils.getOpts(uname, **{"log-y": False})))
    return plots
예제 #3
0
def findJPACategoryBoosted (self, selObj, lepton, muons, electrons, fatJets, jets, bJetsL, bJetsM, met, modelPathDict, event, HLL, nodeList, plot_yield=False):
    JPAfuncDict = {'f1':evaluateJPA_Hbb2Wj, 
                   'f2':evaluateJPA_Hbb1Wj}

    JPAMaxScoreList = []
    bestCombo_per_cat = []
    
    combo2     = op.combine(jets, N=2, pred=lambda j1,j2 : j1.pt > j2.pt, samePred=lambda j1,j2 : j1.idx != j2.idx)
    fakeCombo2 = op.combine(jets, N=2, pred=lambda j1,j2 : j1.pt >= j2.pt, samePred=None)

    funckeys = [k for k in JPAfuncDict.keys()]
    for idx, func in enumerate(funckeys):
        node        = nodeList[idx]
        modelpaths  = modelPathDict.get(node)
        model = makeOddEvenEvaluator(event%2, modelpaths[1], modelpaths[0], mvaType="TMVA")
        lambdaFunc = lambda jetCombo : JPAfuncDict[func](lepton, muons, electrons, fatJets, jetCombo, bJetsL, bJetsM, met, model, HLL)

        if idx == 0:
            best = op.rng_max_element_by(combo2, lambdaFunc)
            maxScore = op.switch(best.idx != -1, best.idx.op.this.result.second, op.c_float(-1.))
        else:
            best = op.rng_max_element_by(fakeCombo2, lambdaFunc)
            #best = op.rng_max_element_by(combo2, lambdaFunc)
            maxScore = best.idx.op.this.result.second
            #maxScore = op.switch(best.idx != -1, best.idx.op.this.result.second, op.c_float(-1.))

        JPAMaxScoreList.append(op.pow((1.0 + op.sqrt((1 - maxScore)/(1 + maxScore))), -1))
        #JPAMaxScoreList.append(maxScore)
        bestCombo_per_cat.append(best)

    evtCat = makeOddEvenEvaluator(event%2, modelPathDict.get('evCat')[1], modelPathDict.get('evCat')[0], mvaType="TMVA")
    JPAL2outList = evtCat(*JPAMaxScoreList)
    maxIdx = op.rng_max_element_index(JPAL2outList)

    newSelObj  = copy(selObj)
    selObjJPAjetsIdxDict = {}
    for i, node in enumerate(nodeList):
        outSelObj = copy(newSelObj)
        outSelObj.selName += '%s'%node
        outSelObj.yieldTitle += " in %s node"%node 
        outSelObj.refine(cut = [maxIdx == op.c_int(i)])
        #if plot_yield:
        #    outSelObj.makeYield(self.yieldPlots)
        if i < 2:
            selObjJPAjetsIdxDict[node] = [outSelObj, bestCombo_per_cat[i]]
        else:
            selObjJPAjetsIdxDict[node] = [outSelObj, None]

    return JPAMaxScoreList, JPAL2outList, selObjJPAjetsIdxDict
예제 #4
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    def definePlots(self, tree, noSel, sample=None, sampleCfg=None):
        from bamboo.plots import Plot, SummedPlot
        from bamboo.plots import EquidistantBinning as EqBin
        from bamboo import treefunctions as op

        plots = []

        # The plot is made for each of the different flavour categories (l+/- l-/+ l') and then summed,
        # because concatenation of containers is not (yet) supported.
        lepColl = {"El": tree.Electron, "Mu": tree.Muon}
        mt3lPlots = []
        for dlNm, dlCol in lepColl.items():
            dilep = op.combine(
                dlCol,
                N=2,
                pred=(lambda l1, l2: op.AND(l1.charge != l2.charge)))
            hasDiLep = noSel.refine("hasDilep{0}{0}".format(dlNm),
                                    cut=(op.rng_len(dilep) > 0))
            dilepZ = op.rng_min_element_by(
                dilep,
                fun=lambda ll: op.abs(
                    op.invariant_mass(ll[0].p4, ll[1].p4) - 91.2))
            for tlNm, tlCol in lepColl.items():
                if tlCol == dlCol:
                    hasTriLep = hasDiLep.refine("hasTrilep{0}{0}{1}".format(
                        dlNm, tlNm),
                                                cut=(op.rng_len(tlCol) > 2))
                    residLep = op.select(
                        tlCol, lambda l: op.AND(l.idx != dilepZ[0].idx, l.idx
                                                != dilepZ[1].idx))
                    l3 = op.rng_max_element_by(residLep, lambda l: l.pt)
                else:
                    hasTriLep = hasDiLep.refine("hasTriLep{0}{0}{1}".format(
                        dlNm, tlNm),
                                                cut=(op.rng_len(tlCol) > 0))
                    l3 = op.rng_max_element_by(tlCol, lambda l: l.pt)
                mtPlot = Plot.make1D(
                    "3lMT_{0}{0}{1}".format(dlNm, tlNm),
                    op.sqrt(2 * l3.pt * tree.MET.pt *
                            (1 - op.cos(l3.phi - tree.MET.phi))),
                    hasTriLep,
                    EqBin(100, 15., 250.),
                    title="M_{T} (GeV/c^2)")
                mt3lPlots.append(mtPlot)
                plots.append(mtPlot)
        plots.append(SummedPlot("3lMT", mt3lPlots))

        return plots
def makeMETPlots(sel, leptons, met, corrMET, uname):
    binScaling = 1
    plots = []

    plots.append(
        Plot.make1D(f"{uname}_MET_pt",
                    met.pt,
                    sel,
                    EqBin(60 // binScaling, 0., 600.),
                    title="MET p_{T} [GeV]",
                    plotopts=utils.getOpts(uname, **{"log-y": False})))
    plots.append(
        Plot.make1D(f"{uname}_MET_phi",
                    met.phi,
                    sel,
                    EqBin(60 // binScaling, -3.1416, 3.1416),
                    title="MET #phi",
                    plotopts=utils.getOpts(uname, **{"log-y": False})))
    for i in range(2):
        plots.append(
            Plot.make1D(f"{uname}_MET_lep{i+1}_deltaPhi",
                        op.Phi_mpi_pi(leptons[i].phi - met.phi),
                        sel,
                        EqBin(60 // binScaling, -3.1416, 3.1416),
                        title="#Delta #phi (lepton, MET)",
                        plotopts=utils.getOpts(uname, **{"log-y": True})))

        MT = op.sqrt(
            2. * met.pt * leptons[i].p4.Pt() *
            (1. - op.cos(op.Phi_mpi_pi(met.phi - leptons[i].p4.Phi()))))
        plots.append(
            Plot.make1D(f"{uname}_MET_MT_lep{i+1}",
                        MT,
                        sel,
                        EqBin(60 // binScaling, 0., 600.),
                        title="Lepton M_{T} [GeV]",
                        plotopts=utils.getOpts(uname, **{"log-y": False})))

    return plots
예제 #6
0
    def __init__(self, HHself):
        # All the attributes of the BaseHH are contained in HHself object
        # All the lambdas will be saved in the highlevelLambdas object to avoid confusions of all the attributes of HH base object

        # 4-Momentum association #
        self.ll_p4 = lambda l1, l2: l1.p4 + l2.p4
        self.lljj_p4 = lambda l1, l2, j1, j2: l1.p4 + l2.p4 + j1.p4 + j2.p4
        self.lep1j_p4 = lambda lep, j1: lep.p4 + j1.p4
        self.lep2j_p4 = lambda lep, j1, j2: lep.p4 + j1.p4 + j2.p4
        self.lep3j_p4 = lambda lep, j1, j2, j3: lep.p4 + j1.p4 + j2.p4 + j3.p4
        self.lep4j_p4 = lambda lep, j1, j2, j3, j4: lep.p4 + j1.p4 + j2.p4 + j3.p4 + j4.p4

        # bReg corr 4 momenta of ak4-bTagged jet #
        self.bJetCorrP4 = lambda j: op._to.Construct(
            "ROOT::Math::LorentzVector<ROOT::Math::PtEtaPhiM4D<float> >",
            (j.pt * j.bRegCorr, j.eta, j.phi, j.mass)).result

        # Dilep-Met variables #
        self.DilepMET_deltaPhi = lambda l1, l2, met: self.ll_p4(l1, l2).Phi(
        ) - met.phi
        self.DilepMET_Pt = lambda l1, l2, met: op.sqrt(
            op.pow(met.pt * op.cos(met.phi) + self.ll_p4(l1, l2).Px(), 2) + op.
            pow(met.pt * op.sin(met.phi) + self.ll_p4(l1, l2).Py(), 2))
        # SingleLep-Met variables
        self.SinglepMet_Pt = lambda lep, met: op.sqrt(
            op.pow(met.pt * op.cos(met.phi) + lep.p4.Px(), 2) + op.pow(
                met.pt * op.sin(met.phi) + lep.p4.Py(), 2))
        self.SinglepMet_dPhi = lambda lep, met: lep.p4.Phi() - met.phi

        # Transverse mass #
        self.MT_ll = lambda l1, l2, met: op.sqrt(2 * self.ll_p4(l1, l2).Pt(
        ) * met.pt * (1 - op.cos(self.ll_p4(l1, l2).Phi() - met.phi)))
        self.MT_lljj = lambda l1, l2, j1, j2, met: op.sqrt(
            2 * self.lljj_p4(l1, l2, j1, j2).Pt() * met.pt *
            (1 - op.cos(self.lljj_p4(l1, l2, j1, j2).Phi() - met.phi)))
        self.MT = lambda lep, met: op.sqrt(2 * lep.p4.Pt() * met.pt * (
            1 - op.cos(lep.p4.Phi() - met.phi)))
        self.MT_W1W2_ljj = lambda lep, j1, j2, met: op.sqrt(
            2 * self.lep2j_p4(lep, j1, j2).Pt() * met.pt *
            (1 - op.cos(self.lep2j_p4(lep, j1, j2).Phi() - met.phi)))
        self.MT_W1W2_lj = lambda lep, j1, met: op.sqrt(
            2 * self.lep1j_p4(lep, j1).Pt() * met.pt *
            (1 - op.cos(self.lep1j_p4(lep, j1).Phi() - met.phi)))
        # TODO : clean different versions (eg MT)

        # dilep + dijet #
        self.M_lljj = lambda l1, l2, j1, j2: op.invariant_mass(
            self.lljj_p4(l1, l2, j1, j2))
        self.MinDR_lj = lambda l1, l2, j1, j2: op.min(
            op.min(op.deltaR(l1.p4, j1.p4), op.deltaR(l1.p4, j2.p4)),
            op.min(op.deltaR(l2.p4, j1.p4), op.deltaR(l2.p4, j2.p4)))

        self.MinDR_lep3j = lambda lep, j1, j2, j3: op.min(
            op.min(op.deltaR(lep.p4, j1.p4), op.deltaR(lep.p4, j2.p4)),
            op.deltaR(lep.p4, j3.p4))

        # Higgs related variables #
        self.HT2 = lambda l1, l2, j1, j2, met: op.sqrt(
            op.pow(met.pt * op.cos(met.phi) + l1.p4.Px() + l2.p4.Px(), 2) + op.
            pow(met.pt * op.sin(met.phi) + l1.p4.Py() + l2.p4.Py(), 2
                )) + op.abs((j1.p4 + j2.p4).Pt())
        self.HT2R = lambda l1, l2, j1, j2, met: self.HT2(
            met, l1, l2, j1, j2) / (met.pt + l1.p4.Pt() + l2.p4.Pt() + j1.p4.
                                    Pt() + j2.p4.Pt())
        self.HT2_l3jmet = lambda l, j1, j2, j3, met: op.sqrt(
            op.pow(met.pt * op.cos(met.phi) + l.p4.Px(), 2) + op.pow(
                met.pt * op.sin(met.phi) + l.p4.Py(), 2)) + op.abs(
                    (j1.p4 + j2.p4 + j3.p4).Pt())
        self.HT2R_l3jmet = lambda l, j1, j2, j3, met: self.HT2_l3jmet(
            met, l, j1, j2, j3) / (met.pt + l.p4.Pt() + j1.p4.Pt() + j2.p4.Pt(
            ) + j3.p4.Pt())
        self.HT2_l4jmet = lambda l, j1, j2, j3, j4, met: op.sqrt(
            op.pow(met.pt * op.cos(met.phi) + l.p4.Px(), 2) + op.pow(
                met.pt * op.sin(met.phi) + l.p4.Py(), 2)) + op.abs(
                    (j1.p4 + j2.p4 + j3.p4 + j4.p4).Pt())
        self.HT2R_l4jmet = lambda l, j1, j2, j3, j4, met: self.HT2_l4jmet(
            met, l, j1, j2, j3, j4) / (met.pt + l.p4.Pt() + j1.p4.Pt() + j2.p4.
                                       Pt() + j3.p4.Pt() + j4.p4.Pt())

        #min j1j2DR
        self.MinDiJetDRLoose = lambda j1, j2, j3: op.min(
            op.min(op.deltaR(j1.p4, j2.p4), op.deltaR(j2.p4, j3.p4)),
            op.deltaR(j1.p4, j3.p4))

        # ------------------------------------ lambdas for BDT variables ------------------------------------ #
        self.mindr_lep1_jet = lambda lep, jets: op.deltaR(
            lep.p4,
            op.sort(jets, lambda j: op.deltaR(lep.p4, j.p4))[0].p4)
        self.HT = lambda jets: op.rng_sum(jets, lambda j: j.p4.Pt())

        # mT2
        self.ET = lambda lep: op.sqrt(
            op.pow(lep.p4.M(), 2) + op.pow(lep.p4.Pt(), 2))
        self.mT2 = lambda jet, lep, met: (
            op.pow(jet.p4.M(), 2) + op.pow(lep.p4.M(), 2) + op.pow(
                met.p4.M(), 2) + 2 *
            (ET(lep) * ET(jet) -
             (lep.p4.Px() * jet.p4.Px() + lep.p4.Py() * jet.p4.Py())) + 2 *
            (ET(lep) * ET(met) -
             (lep.p4.Px() * met.p4.Px() + lep.p4.Py() * met.p4.Py())) + 2 *
            (ET(jet) * ET(met) -
             (jet.p4.Px() * met.p4.Px() + jet.p4.Py() * met.p4.Py())))

        # pZ component of met
        # https://github.com/HEP-KBFI/hh-bbww/blob/f4ab60f81a920268a3f2187b97a58ec449b26883/src/comp_metP4_B2G_18_008.cc
        # some necessary constants (visP4 = lepP4 + Wjj_simple)
        # - - - - - used to compute neuP4 - - - - - #
        _a = lambda visP4, met, mH: (op.pow(mH, 2) - op.pow(visP4.M(
        ), 2) + 2. * visP4.Px() * met.p4.Px() + 2. * visP4.Py() * met.p4.Py())
        _A = lambda visP4: 4.0 * op.pow(visP4.E(), 2) - op.pow(visP4.Pz(), 2)
        _B = lambda visP4, met, mH: -4.0 * _a(visP4, met, mH) * visP4.Pz()
        _C = lambda visP4, met, mH: 4.0 * op.pow(visP4.E(), 2) * (op.pow(
            met.p4.Px(), 2) + op.pow(met.p4.Py(), 2)) - op.pow(
                _a(visP4, met, mH), 2)
        _D = lambda visP4, met, mH: (op.pow(_B(visP4, met, mH), 2) - 4.0 * _A(
            visP4) * _C(visP4, met, mH))
        _pos = lambda visP4, met, mH: (-_B(visP4, met, mH) + op.sqrt(
            _D(visP4, met, mH))) / (2. * _A(visP4))
        _neg = lambda visP4, met, mH: (-_B(visP4, met, mH) - op.sqrt(
            _D(visP4, met, mH))) / (2. * _A(visP4))
        neuPz = lambda visP4, met, mH: (op.switch(
            _D(visP4, met, mH) < 0., -_B(visP4, met, mH) / (2. * _A(visP4)),
            op.switch(
                op.abs(_pos(visP4, met, mH)) < op.abs(_neg(visP4, met, mH)),
                _pos(visP4, met, mH), _neg(visP4, met, mH))))
        # - - - - - - - - - - - - - - - - - - - - - #
        neuP4 = lambda visP4, met, mH: op._to.Construct(
            "ROOT::Math::LorentzVector<ROOT::Math::PxPyPzE4D<float> >",
            (met.p4.Px(), met.p4.Py(), neuPz(visP4, met, mH),
             op.sqrt(
                 op.pow(met.p4.Px(), 2) + op.pow(met.p4.Py(), 2) + op.pow(
                     neuPz(visP4, met, mH), 2)))).result

        # P4 of W1 (l,neu)
        self.Wlep_simple = lambda j1P4, j2P4, lepP4, met, mH: lepP4 + neuP4(
            j1P4 + j2P4 + lepP4, met, mH)
        # P4 of W2 (j,j)
        self.Wjj_simple = lambda j1P4, j2P4: j1P4 + j2P4
        # P4 of HWW (W1 + W2)
        self.HWW_simple = lambda j1P4, j2P4, lepP4, met, mH: Wjj_simple(
            j1P4, j2P4) + Wlep_simple(lepP4, neuP4(j1P4 + j2P4 + lepP4, met, mH
                                                   ))
        # dR_HWW
        self.dR_Hww = lambda j1P4, j2P4, lepP4, met, mH: op.deltaR(
            Wjj_simple(j1P4, j2P4), Wlep_simple(j1P4, j2P4, lepP4, met, mH))
        # P4 of lep + met
        self.Wlep_met_simple = lambda lepP4, metP4: lepP4 + metP4
        # SimpleP4 of HWW (W1 + W2)
        self.HWW_met_simple = lambda j1P4, j2P4, lepP4, metP4: Wjj_simple(
            j1P4, j2P4) + Wlep_met_simple(lepP4, metP4)
        # Total P4
        self.HHP4_simple_met = lambda HbbRegP4, j1P4, j2P4, lepP4, metP4: HbbRegP4 + Wjj_simple(
            j1P4, j2P4) + Wlep_met_simple(lepP4, metP4)

        # CosThetaS calculation
        #comp_cosThetaS = lambda ob1p4, ob2p4 : op.abs(ob1p4.Boost(-(ob1p4+ob2p4).BoostVector()).CosTheta())
        motherPx = lambda ob1p4, ob2p4: (ob1p4.Px() + ob2p4.Px())
        motherPy = lambda ob1p4, ob2p4: (ob1p4.Py() + ob2p4.Py())
        motherPz = lambda ob1p4, ob2p4: (ob1p4.Pz() + ob2p4.Pz())
        motherE = lambda ob1p4, ob2p4: (ob1p4.E() + ob2p4.E())
        BoostP4 = lambda ob1p4, ob2p4: op._to.Construct(
            "ROOT::Math::LorentzVector<ROOT::Math::PxPyPzE4D<float> >",
            (motherPx(ob1p4, ob2p4), motherPy(ob1p4, ob2p4),
             motherPz(ob1p4, ob2p4), motherE(ob1p4, ob2p4))).result
        self.comp_cosThetaS = lambda ob1p4, ob2p4: op.abs(
            op.cos(op.deltaR(BoostP4(ob1p4, ob2p4), ob1p4)))

        # MET_LD
        # Equation 3 (page 33) of AN-2019/111 v13
        # Similar to MET, but more robust against pileup
        jetSumPx = lambda jets: op.rng_sum(jets, lambda j: j.p4.Px())
        jetSumPy = lambda jets: op.rng_sum(jets, lambda j: j.p4.Py())
        lepSumPx = lambda leps: op.rng_sum(leps, lambda l: l.p4.Px())
        lepSumPy = lambda leps: op.rng_sum(leps, lambda l: l.p4.Py())
        self.MET_LD = lambda met, jets, leps: 0.6 * met.pt + 0.4 * op.sqrt(
            op.pow(jetSumPx(jets) + lepSumPx(leps), 2) + op.pow(
                jetSumPy(jets) + lepSumPy(leps), 2))
예제 #7
0
    def __init__(self, rawMET, pv, sample, era, isMC):
        if (era == '2016'):
            if isMC:
                xcorr = (0.195191, 0.170948)
                ycorr = (0.0311891, -0.787627)
            else:
                if '2016B' in sample:
                    xcorr = (0.0478335, 0.108032)
                    ycorr = (-0.125148, -0.355672)
                elif '2016C' in sample:
                    xcorr = (0.0916985, -0.393247)
                    ycorr = (-0.151445, -0.114491)
                elif '2016D' in sample:
                    xcorr = (0.0581169, -0.567316)
                    ycorr = (-0.147549, -0.403088)
                elif '2016E' in sample:
                    xcorr = (0.065622, -0.536856)
                    ycorr = (-0.188532, -0.495346)
                elif '2016F' in sample:
                    xcorr = (0.0313322, -0.39866)
                    ycorr = (-0.16081, -0.960177)
                elif '2016G' in sample:
                    xcorr = (-0.040803, 0.290384)
                    ycorr = (-0.0961935, -0.666096)
                else:
                    xcorr = (-0.0330868, 0.209534)
                    ycorr = (-0.141513, -0.816732)

        elif (era == '2017'):
            if isMC:
                xcorr = (0.217714, -0.493361)
                ycorr = (-0.177058, 0.336648)
            #these are the corrections for v2 MET recipe (currently recommended for 2017)
            else:
                if '2017B' in sample:
                    xcorr = (0.19563, -1.51859)
                    ycorr = (-0.306987, 1.84713)
                elif '2017C' in sample:
                    xcorr = (0.161661, -0.589933)
                    ycorr = (-0.233569, 0.995546)
                elif '2017D' in sample:
                    xcorr = (0.180911, -1.23553)
                    ycorr = (-0.240155, 1.27449)
                elif '2017E' in sample:
                    xcorr = (0.149494, -0.901305)
                    ycorr = (-0.178212, 0.535537)
                else:
                    xcorr = (0.165154, -1.02018)
                    ycorr = (-0.253794, -0.75776)
        elif (era == '2018'):
            if isMC:
                xcorr = (-0.296713, 0.141506)
                ycorr = (-0.115685, -0.0128193)
            else:
                if '2018A' in sample:
                    xcorr = (-0.362865, 1.94505)
                    ycorr = (-0.0709085, 0.307365)
                elif '2018B' in sample:
                    xcorr = (-0.492083, 2.93552)
                    ycorr = (-0.17874, 0.786844)
                elif '2018C' in sample:
                    xcorr = (-0.521349, 1.44544)
                    ycorr = (-0.118956, 1.96434)
                else:
                    xcorr = (-0.531151, 1.37568)
                    ycorr = (-0.0884639, 1.57089)

        METxcorr = xcorr[0] * op.min(pv.npvs, op.c_int(100)) + xcorr[1]
        METycorr = ycorr[0] * op.min(pv.npvs, op.c_int(100)) + ycorr[1]

        corrMETx = rawMET.pt * op.cos(rawMET.phi) + METxcorr
        corrMETy = rawMET.pt * op.sin(rawMET.phi) + METycorr

        atan = op.atan(corrMETy / corrMETx)

        self.pt = op.sqrt(corrMETx**2 + corrMETy**2)
        self.eta = op.c_float(0.)
        self.phi = op.multiSwitch((corrMETx > 0, atan),
                                  (corrMETy > 0, atan + math.pi),
                                  atan - math.pi)
        self.M = op.c_float(0.)

        #self.p4 = op.construct("ROOT::Math::LorentzVector<ROOT::Math::PxPyPzE4D<float> >",
        #                (corrMETx,corrMETy,op.c_float(0.),op.sqrt(corrMETx**2 +corrMETy**2)))
        self.p4 = op.construct(
            "ROOT::Math::LorentzVector<ROOT::Math::PtEtaPhiM4D<float> >",
            (self.pt, self.eta, self.phi, self.M))
    def definePlots(self, tree, noSel, sample=None, sampleCfg=None):
        from bamboo.plots import Plot, SummedPlot
        from bamboo.plots import EquidistantBinning as EqBin
        from bamboo import treefunctions as op

        if self.args.examples == "all":
            examples = list(i+1 for i in range(self.nExamples)) # 1-4 are fine, so is 7
        else:
            examples = list(set(int(tk) for tk in self.args.examples.split(",")))
        logger.info("Running the following examples: {0}".format(",".join(str(i) for i in examples)))
                
        plots = []
        if 1 in examples:
            ## Example 1: Plot the missing ET of all events.
            plots.append(Plot.make1D("Ex1_MET",
                tree.MET.pt, noSel,
                EqBin(100, 0., 2000.), title="MET (GeV)"))

        if 2 in examples:
            ## Example 2: Plot pT of all jets in all events.
            plots.append(Plot.make1D("Ex2_jetPt",
                op.map(tree.Jet, lambda j : j.pt), noSel,
                EqBin(100, 15., 60.), title="Jet p_{T} (GeV/c)"))

        if 3 in examples:
            ## Example 3: Plot pT of jets with |η| < 1.
            centralJets1 = op.select(tree.Jet, lambda j : op.abs(j.eta) < 1.)
            plots.append(Plot.make1D("Ex3_central1_jetPt",
                op.map(centralJets1, lambda j : j.pt), noSel,
                EqBin(100, 15., 60.), title="Jet p_{T} (GeV/c)"))

        if 4 in examples:
            ## Example 4: Plot the missing ET of events that have at least two jets with pT > 40 GeV.
            jets40 = op.select(tree.Jet, lambda j : j.pt > 40)
            hasTwoJets40 = noSel.refine("twoJets40", cut=(op.rng_len(jets40) >= 2))
            plots.append(Plot.make1D("Ex4_twoJets40_MET",
                tree.MET.pt, hasTwoJets40,
                EqBin(100, 0., 2000.), title="MET (GeV)"))

        if 5 in examples:
            ## Example 5: Plot the missing ET of events that have an opposite-sign muon pair with an invariant mass between 60 and 120 GeV.
            dimu_Z = op.combine(tree.Muon, N=2, pred=(lambda mu1, mu2 : op.AND(
                mu1.charge != mu2.charge,
                op.in_range(60., op.invariant_mass(mu1.p4, mu2.p4), 120.)
                )))
            hasDiMuZ = noSel.refine("hasDiMuZ", cut=(op.rng_len(dimu_Z) > 0))
            plots.append(Plot.make1D("Ex5_dimuZ_MET",
                tree.MET.pt, hasDiMuZ,
                EqBin(100, 0., 2000.), title="MET (GeV)"))

        if 6 in examples:
            ## Example 6: Plot pT of the trijet system with the mass closest to 172.5 GeV in each event and plot the maximum b-tagging discriminant value among the jets in the triplet.
            trijets = op.combine(tree.Jet, N=3)
            hadTop = op.rng_min_element_by(trijets,
                fun=lambda comb: op.abs((comb[0].p4+comb[1].p4+comb[2].p4).M()-172.5))
            hadTop_p4 = (hadTop[0].p4 + hadTop[1].p4 + hadTop[2].p4)
            hasTriJet = noSel.refine("hasTriJet", cut=(op.rng_len(trijets) > 0))
            plots.append(Plot.make1D("Ex6_trijet_topPt",
                hadTop_p4.Pt(), hasTriJet,
                EqBin(100, 15., 40.), title="Trijet p_{T} (GeV/c)"))
            plots.append(Plot.make1D("Ex6_trijet_maxbtag",
                op.max(op.max(hadTop[0].btag, hadTop[1].btag), hadTop[2].btag), hasTriJet,
                EqBin(100, 0., 1.), title="Trijet maximum b-tag"))
            if verbose:
                plots.append(Plot.make1D("Ex6_njets",
                    op.rng_len(tree.Jet), noSel,
                    EqBin(20, 0., 20.), title="Number of jets"))
                plots.append(Plot.make1D("Ex6_ntrijets",
                    op.rng_len(trijets), noSel,
                    EqBin(100, 0., 1000.), title="Number of 3-jet combinations"))
                plots.append(Plot.make1D("Ex6_trijet_mass",
                    hadTop_p4.M(), hasTriJet,
                    EqBin(100, 0., 250.), title="Trijet mass (GeV/c^{2})"))

        if 7 in examples:
            ## Example 7: Plot the sum of pT of jets with pT > 30 GeV that are not within 0.4 in ΔR of any lepton with pT > 10 GeV.
            el10  = op.select(tree.Electron, lambda el : el.pt > 10.)
            mu10  = op.select(tree.Muon    , lambda mu : mu.pt > 10.)
            cleanedJets30 = op.select(tree.Jet, lambda j : op.AND(
                j.pt > 30.,
                op.NOT(op.rng_any(el10, lambda el : op.deltaR(j.p4, el.p4) < 0.4 )),
                op.NOT(op.rng_any(mu10, lambda mu : op.deltaR(j.p4, mu.p4) < 0.4 ))
                ))
            plots.append(Plot.make1D("Ex7_sumCleanedJetPt",
                op.rng_sum(cleanedJets30, lambda j : j.pt), noSel,
                EqBin(100, 15., 200.), title="Sum p_{T} (GeV/c)"))

        if 8 in examples:
            ## Example 8: For events with at least three leptons and a same-flavor opposite-sign lepton pair, find the same-flavor opposite-sign lepton pair with the mass closest to 91.2 GeV and plot the transverse mass of the missing energy and the leading other lepton.
            # The plot is made for each of the different flavour categories (l+/- l-/+ l') and then summed,
            # because concatenation of containers is not (yet) supported.
            lepColl = { "El" : tree.Electron, "Mu" : tree.Muon }
            mt3lPlots = []
            for dlNm,dlCol in lepColl.items():
                dilep = op.combine(dlCol, N=2, pred=(lambda l1,l2 : op.AND(l1.charge != l2.charge)))
                hasDiLep = noSel.refine("hasDilep{0}{0}".format(dlNm), cut=(op.rng_len(dilep) > 0))
                dilepZ = op.rng_min_element_by(dilep, fun=lambda ll : op.abs(op.invariant_mass(ll[0].p4, ll[1].p4)-91.2))
                for tlNm,tlCol in lepColl.items():
                    if tlCol == dlCol:
                        hasTriLep = hasDiLep.refine("hasTrilep{0}{0}{1}".format(dlNm,tlNm),
                            cut=(op.rng_len(tlCol) > 2))
                        residLep = op.select(tlCol, lambda l : op.AND(l.idx != dilepZ[0].idx, l.idx != dilepZ[1].idx))
                        l3 = op.rng_max_element_by(residLep, lambda l : l.pt)
                    else:
                        hasTriLep = hasDiLep.refine("hasTriLep{0}{0}{1}".format(dlNm,tlNm),
                            cut=(op.rng_len(tlCol) > 0))
                        l3 = op.rng_max_element_by(tlCol, lambda l : l.pt)
                    mtPlot = Plot.make1D("Ex8_3lMT_{0}{0}{1}".format(dlNm,tlNm),
                        op.sqrt(2*l3.pt*tree.MET.pt*(1-op.cos(l3.phi-tree.MET.phi))), hasTriLep,
                        EqBin(100, 15., 250.), title="M_{T} (GeV/c^2)")
                    mt3lPlots.append(mtPlot)
                    plots.append(mtPlot)
            plots.append(SummedPlot("Ex8_3lMT", mt3lPlots))

        return plots
예제 #9
0
def returnResonantMVAInputs(self, l1, l2, channel, jets, bjets, fatjets, met,
                            electrons, muons):
    if channel == "ElEl":
        l1conept = lambda l1: self.electron_conept[l1.idx]
        l2conept = lambda l2: self.electron_conept[l2.idx]
    elif channel == "MuMu":
        l1conept = lambda l1: self.muon_conept[l1.idx]
        l2conept = lambda l2: self.muon_conept[l2.idx]
    elif channel == "ElMu":
        l1conept = lambda l1: self.electron_conept[l1.idx]
        l2conept = lambda l2: self.muon_conept[l2.idx]
    else:
        raise RuntimeError("Wrong channel")

    dijets = op.combine(jets, N=2)

    import bamboo.treeoperations as _to

    def rng_min(rng, fun=(lambda x: x), typeName="float"):
        return op._to.Reduce.fromRngFun(
            rng, op.c_float(float("+inf"), typeName),
            (lambda fn:
             (lambda res, elm: op.extMethod("std::min", returnType="Float_t")
              (res, fn(elm))))(fun))

    if self.args.era is None:
        era = op.c_int(int(self.era))
    else:
        era = op.c_int(int(self.args.era))
        print(f'Using {self.args.era} as DNN input')

    return {
        ('eventnr', 'Event number', (100, 0., 1e6)):
        self.tree.event,
        ('era', 'Era', (3, 2016., 2019.)):
        era,
        ('l1_E', 'Lead lepton E [GeV]', (50, 0., 500.)):
        op.switch(l1conept(l1) >= l2conept(l2), l1.p4.E(), l2.p4.E()),
        ('l1_Px', 'Lead lepton P_x [GeV]', (40, -200., 200.)):
        op.switch(l1conept(l1) >= l2conept(l2), l1.p4.Px(), l2.p4.Px()),
        ('l1_Py', 'Lead lepton P_y [GeV]', (40, -200., 200.)):
        op.switch(l1conept(l1) >= l2conept(l2), l1.p4.Py(), l2.p4.Py()),
        ('l1_Pz', 'Lead lepton P_z [GeV]', (40, -200., 200.)):
        op.switch(l1conept(l1) >= l2conept(l2), l1.p4.Pz(), l2.p4.Pz()),
        ('l1_charge', 'Lead lepton charge', (2, 0., 2.)):
        op.switch(l1conept(l1) >= l2conept(l2), l1.charge, l2.charge),
        ('l1_pdgId', 'Lead lepton pdg ID', (45, -22., 22.)):
        op.switch(l1conept(l1) >= l2conept(l2), l1.pdgId, l2.pdgId),
        ('l2_E', 'Sublead lepton E [GeV]', (50, 0., 500.)):
        op.switch(l1conept(l1) >= l2conept(l2), l2.p4.E(), l1.p4.E()),
        ('l2_Px', 'Sublead lepton P_x [GeV]', (40, -200., 200.)):
        op.switch(l1conept(l1) >= l2conept(l2), l2.p4.Px(), l1.p4.Px()),
        ('l2_Py', 'Sublead lepton P_y [GeV]', (40, -200., 200.)):
        op.switch(l1conept(l1) >= l2conept(l2), l2.p4.Py(), l1.p4.Py()),
        ('l2_Pz', 'Sublead lepton P_z [GeV]', (40, -200., 200.)):
        op.switch(l1conept(l1) >= l2conept(l2), l2.p4.Pz(), l1.p4.Pz()),
        ('l2_charge', 'Sublead lepton charge', (2, 0., 2.)):
        op.switch(l1conept(l1) >= l2conept(l2), l2.charge, l1.charge),
        ('l2_pdgId', 'Sublead lepton pdg ID', (45, -22., 22.)):
        op.switch(l1conept(l1) >= l2conept(l2), l2.pdgId, l1.pdgId),
        ('j1_E', 'Lead jet E [GeV]', (50, 0., 500.)):
        op.switch(op.rng_len(jets) > 0, jets[0].p4.E(), op.c_float(0.)),
        ('j1_Px', 'Lead jet P_x [GeV]', (40, -200., 200.)):
        op.switch(op.rng_len(jets) > 0, jets[0].p4.Px(), op.c_float(0.)),
        ('j1_Py', 'Lead jet P_y [GeV]', (40, -200., 200.)):
        op.switch(op.rng_len(jets) > 0, jets[0].p4.Py(), op.c_float(0.)),
        ('j1_Pz', 'Lead jet P_z [GeV]', (40, -200., 200.)):
        op.switch(op.rng_len(jets) > 0, jets[0].p4.Pz(), op.c_float(0.)),
        ('j2_E', 'Sublead jet E [GeV]', (50, 0., 500.)):
        op.switch(op.rng_len(jets) > 1, jets[1].p4.E(), op.c_float(0.)),
        ('j2_Px', 'Sublead jet P_x [GeV]', (40, -200., 200.)):
        op.switch(op.rng_len(jets) > 1, jets[1].p4.Px(), op.c_float(0.)),
        ('j2_Py', 'Sublead jet P_y [GeV]', (40, -200., 200.)):
        op.switch(op.rng_len(jets) > 1, jets[1].p4.Py(), op.c_float(0.)),
        ('j2_Pz', 'Sublead jet P_z [GeV]', (40, -200., 200.)):
        op.switch(op.rng_len(jets) > 1, jets[1].p4.Pz(), op.c_float(0.)),
        ('j3_E', 'Subsublead jet E [GeV]', (50, 0., 500.)):
        op.switch(op.rng_len(jets) > 2, jets[2].p4.E(), op.c_float(0.)),
        ('j3_Px', 'Subsublead jet P_x [GeV]', (40, -200., 200.)):
        op.switch(op.rng_len(jets) > 2, jets[2].p4.Px(), op.c_float(0.)),
        ('j3_Py', 'Subsublead jet P_y [GeV]', (40, -200., 200.)):
        op.switch(op.rng_len(jets) > 2, jets[2].p4.Py(), op.c_float(0.)),
        ('j3_Pz', 'Subsublead jet P_z [GeV]', (40, -200., 200.)):
        op.switch(op.rng_len(jets) > 2, jets[2].p4.Pz(), op.c_float(0.)),
        ('j4_E', 'Subsubsublead jet E [GeV]', (50, 0., 500.)):
        op.switch(op.rng_len(jets) > 3, jets[3].p4.E(), op.c_float(0.)),
        ('j4_Px', 'Subsubsublead jet P_x [GeV]', (40, -200., 200.)):
        op.switch(op.rng_len(jets) > 3, jets[3].p4.Px(), op.c_float(0.)),
        ('j4_Py', 'Subsubsublead jet P_y [GeV]', (40, -200., 200.)):
        op.switch(op.rng_len(jets) > 3, jets[3].p4.Py(), op.c_float(0.)),
        ('j4_Pz', 'Subsubsublead jet P_z [GeV]', (40, -200., 200.)):
        op.switch(op.rng_len(jets) > 3, jets[3].p4.Pz(), op.c_float(0.)),
        ('fatjet_E', 'Fatjet E [GeV]', (50, 0., 500.)):
        op.switch(op.rng_len(fatjets) > 0, fatjets[0].p4.E(), op.c_float(0.)),
        ('fatjet_Px', 'Fatjet P_x [GeV]', (40, -200., 200.)):
        op.switch(op.rng_len(fatjets) > 0, fatjets[0].p4.Px(), op.c_float(0.)),
        ('fatjet_Py', 'Fatjet P_y [GeV]', (40, -200., 200.)):
        op.switch(op.rng_len(fatjets) > 0, fatjets[0].p4.Py(), op.c_float(0.)),
        ('fatjet_Pz', 'Fatjet P_z [GeV]', (40, -200., 200.)):
        op.switch(op.rng_len(fatjets) > 0, fatjets[0].p4.Pz(), op.c_float(0.)),
        ('fatjet_tau1', 'Fatjet #tau_1', (50, 0., 1.)):
        op.switch(op.rng_len(fatjets) > 0, fatjets[0].tau1, op.c_float(0.)),
        ('fatjet_tau2', 'Fatjet #tau_2', (50, 0., 1.)):
        op.switch(op.rng_len(fatjets) > 0, fatjets[0].tau2, op.c_float(0.)),
        ('fatjet_tau3', 'Fatjet #tau_3', (50, 0., 1.)):
        op.switch(op.rng_len(fatjets) > 0, fatjets[0].tau3, op.c_float(0.)),
        ('fatjet_tau4', 'Fatjet #tau_4', (50, 0., 1.)):
        op.switch(op.rng_len(fatjets) > 0, fatjets[0].tau4, op.c_float(0.)),
        ('fatjet_softdrop', 'Fatjet softdrop mass [GeV]', (50, 0., 1000.)):
        op.switch(
            op.rng_len(fatjets) > 0, fatjets[0].msoftdrop, op.c_float(0.)),
        ('met_E', 'MET Energy', (50, 0., 500.)):
        met.p4.E(),
        ('met_Px', 'MET P_x', (40, -200., 200.)):
        met.p4.Px(),
        ('met_Py', 'MET P_y', (40, -200., 200.)):
        met.p4.Py(),
        ('met_Pz', 'MET P_z', (40, -200., 200.)):
        met.p4.Pz(),
        ('m_bb_bregcorr', 'Di-bjet invariant mass (regcorr) [GeV]', (100, 0., 1000.)):
        op.multiSwitch(
            (op.rng_len(bjets) == 0, op.c_float(0.)),
            (op.rng_len(bjets) == 1, self.HLL.getCorrBp4(bjets[0]).M()),
            op.invariant_mass(self.HLL.getCorrBp4(bjets[0]),
                              self.HLL.getCorrBp4(bjets[1]))),
        ('ht', 'HT(jets) [GeV]', (100, 0., 1000.)):
        op.rng_sum(jets, lambda j: j.pt),
        ('min_dr_jets_lep1', 'Min(#Delta R(lead lepton,jets))', (25, 0., 5.)):
        op.switch(
            op.rng_len(jets) > 0,
            op.switch(
                l1conept(l1) >= l2conept(l2),
                self.HLL.MinDR_part1_partCont(l1.p4, jets),
                self.HLL.MinDR_part1_partCont(l2.p4, jets)), op.c_float(0.)),
        ('min_dr_jets_lep2', 'Min(#Delta R(sublead lepton,jets))', (25, 0., 5.)):
        op.switch(
            op.rng_len(jets) > 0,
            op.switch(
                l1conept(l1) >= l2conept(l2),
                self.HLL.MinDR_part1_partCont(l2.p4, jets),
                self.HLL.MinDR_part1_partCont(l1.p4, jets)), op.c_float(0.)),
        ('m_ll', 'Dilepton invariant mass [GeV]', (100, 0., 1000.)):
        op.invariant_mass(l1.p4, l2.p4),
        ('dr_ll', 'Dilepton #Delta R', (25, 0., 5.)):
        op.deltaR(l1.p4, l2.p4),
        ('min_dr_jet', 'Min(#Delta R(jets))', (25, 0., 5.)):
        op.switch(
            op.rng_len(dijets) > 0,
            op.rng_min(dijets,
                       lambda dijet: op.deltaR(dijet[0].p4, dijet[1].p4)),
            op.c_float(0.)),
        ('min_dphi_jet', 'Min(#Delta #Phi(jets))', (16, 0., 3.2)):
        op.switch(
            op.rng_len(dijets) > 0,
            rng_min(
                dijets,
                lambda dijet: op.abs(op.deltaPhi(dijet[0].p4, dijet[1].p4)),
                typeName='double'), op.c_float(0.)),
        ('m_hh_simplemet_bregcorr', 'M_{HH} (simple MET) (regcorr) [GeV]', (100, 0., 1000.)):
        op.invariant_mass(
            op.rng_sum(bjets,
                       lambda bjet: self.HLL.getCorrBp4(bjet),
                       start=self.HLL.empty_p4), l1.p4, l2.p4, met.p4),
        ('met_ld', 'MET_{LD}', (100, 0., 1000.)):
        self.HLL.MET_LD_DL(met, jets, electrons, muons),
        ('dr_bb', 'Di-bjet #Delta R', (25, 0., 5.)):
        op.switch(
            op.rng_len(bjets) >= 2, op.deltaR(bjets[0].p4, bjets[1].p4),
            op.c_float(0.)),
        ('min_dr_leps_b1', 'Min(#Delta R(lead bjet,dilepton))', (25, 0., 5.)):
        op.switch(
            op.rng_len(bjets) >= 1,
            self.HLL.MinDR_part1_dipart(bjets[0].p4, [l1.p4, l2.p4]),
            op.c_float(0.)),
        ('min_dr_leps_b2', 'Min(#Delta R(sublead bjet,dilepton))', (25, 0., 5.)):
        op.switch(
            op.rng_len(bjets) >= 2,
            self.HLL.MinDR_part1_dipart(bjets[1].p4, [l1.p4, l2.p4]),
            op.c_float(0.)),
        ('lep1_conept', 'Lead lepton cone-P_T [GeV]', (40, 0., 200.)):
        op.switch(l1conept(l1) >= l2conept(l2), l1conept(l1), l2conept(l2)),
        ('lep2_conept', 'Sublead lepton cone-P_T [GeV]', (40, 0., 200.)):
        op.switch(l1conept(l1) >= l2conept(l2), l2conept(l2), l1conept(l1)),
        ('mww_simplemet', 'M_{WW} (simple MET) [GeV]', (100, 0., 1000.)):
        op.invariant_mass(l1.p4, l2.p4, met.p4),
        ('boosted_tag', 'Boosted tag', (2, 0., 2.)):
        op.c_int(
            op.OR(
                op.rng_len(self.ak8BJets) > 0,  # Boosted 1B
                op.AND(
                    op.rng_len(self.ak8BJets) == 0,  # Boosted 0B
                    op.rng_len(self.ak8Jets) > 0,
                    op.rng_len(self.ak4BJets) == 0))),
        ('dphi_met_dilep', 'Dilepton-MET #Delta #Phi', (32, -3.2, 3.2)):
        op.abs(op.deltaPhi(met.p4, (l1.p4 + l2.p4))),
        ('dphi_met_dibjet', 'Dibjet-MET #Delta #Phi', (32, -3.2, 3.2)):
        op.multiSwitch(
            (op.rng_len(bjets) == 0, op.c_float(0.)),
            (op.rng_len(bjets) == 1, op.abs(op.deltaPhi(met.p4, bjets[0].p4))),
            op.abs(op.deltaPhi(met.p4, (bjets[0].p4 + bjets[1].p4)))),
        ('dr_dilep_dijet', 'Dilepton-dijet #Delta R', (25, 0., 5.)):
        op.multiSwitch(
            (op.rng_len(jets) == 0, op.c_float(0.)),
            (op.rng_len(jets) == 1, op.deltaR((l1.p4 + l2.p4), jets[0].p4)),
            op.deltaR((l1.p4 + l2.p4), (jets[0].p4 + jets[1].p4))),
        ('dr_dilep_dibjet', 'Dilepton-dibjet #Delta R', (25, 0., 5.)):
        op.multiSwitch(
            (op.rng_len(bjets) == 0, op.c_float(0.)),
            (op.rng_len(bjets) == 1, op.deltaR((l1.p4 + l2.p4), bjets[0].p4)),
            op.deltaR((l1.p4 + l2.p4), (bjets[0].p4 + bjets[1].p4))),
        ('m_T', 'Transverse mass', (100, 0., 1000.)):
        op.sqrt(2 * (l1.p4 + l2.p4).Pt() * met.p4.E() *
                (1 - op.cos((l1.p4 + l2.p4).Phi() - met.p4.Phi()))),
        ('cosThetaS_Hbb', 'Helicity angle between Hbb and bjet', (20, 0., 1.)):
        op.switch(
            op.rng_len(bjets) == 2,
            op.extMethod("HHbbWWJPA::cosThetaS",
                         returnType="float")(bjets[0].p4, bjets[1].p4),
            op.c_float(0.)),
        ('LBN_inputs', 'LBN inputs', None): [
            op.switch(l1conept(l1) >= l2conept(l2), l1.p4.E(), l2.p4.E()),
            op.switch(l1conept(l1) >= l2conept(l2), l1.p4.Px(), l2.p4.Px()),
            op.switch(l1conept(l1) >= l2conept(l2), l1.p4.Py(), l2.p4.Py()),
            op.switch(l1conept(l1) >= l2conept(l2), l1.p4.Pz(), l2.p4.Pz()),
            op.switch(l1conept(l1) >= l2conept(l2), l2.p4.E(), l1.p4.E()),
            op.switch(l1conept(l1) >= l2conept(l2), l2.p4.Px(), l1.p4.Px()),
            op.switch(l1conept(l1) >= l2conept(l2), l2.p4.Py(), l1.p4.Py()),
            op.switch(l1conept(l1) >= l2conept(l2), l2.p4.Pz(), l1.p4.Pz()),
            op.switch(op.rng_len(jets) > 0, jets[0].p4.E(), op.c_float(0.)),
            op.switch(op.rng_len(jets) > 0, jets[0].p4.Px(), op.c_float(0.)),
            op.switch(op.rng_len(jets) > 0, jets[0].p4.Py(), op.c_float(0.)),
            op.switch(op.rng_len(jets) > 0, jets[0].p4.Pz(), op.c_float(0.)),
            op.switch(op.rng_len(jets) > 1, jets[1].p4.E(), op.c_float(0.)),
            op.switch(op.rng_len(jets) > 1, jets[1].p4.Px(), op.c_float(0.)),
            op.switch(op.rng_len(jets) > 1, jets[1].p4.Py(), op.c_float(0.)),
            op.switch(op.rng_len(jets) > 1, jets[1].p4.Pz(), op.c_float(0.)),
            op.switch(op.rng_len(jets) > 2, jets[2].p4.E(), op.c_float(0.)),
            op.switch(op.rng_len(jets) > 2, jets[2].p4.Px(), op.c_float(0.)),
            op.switch(op.rng_len(jets) > 2, jets[2].p4.Py(), op.c_float(0.)),
            op.switch(op.rng_len(jets) > 2, jets[2].p4.Pz(), op.c_float(0.)),
            op.switch(op.rng_len(jets) > 3, jets[3].p4.E(), op.c_float(0.)),
            op.switch(op.rng_len(jets) > 3, jets[3].p4.Px(), op.c_float(0.)),
            op.switch(op.rng_len(jets) > 3, jets[3].p4.Py(), op.c_float(0.)),
            op.switch(op.rng_len(jets) > 3, jets[3].p4.Pz(), op.c_float(0.)),
            op.switch(
                op.rng_len(fatjets) > 0, fatjets[0].p4.E(), op.c_float(0.)),
            op.switch(
                op.rng_len(fatjets) > 0, fatjets[0].p4.Px(), op.c_float(0.)),
            op.switch(
                op.rng_len(fatjets) > 0, fatjets[0].p4.Py(), op.c_float(0.)),
            op.switch(
                op.rng_len(fatjets) > 0, fatjets[0].p4.Pz(), op.c_float(0.))
        ]
    }
예제 #10
0
def findJPACategoryResolved (self, selObj, lepton, muons, electrons, jets, bJetsL, bJetsM, met, modelPathDict, event, HLL, nodeList, plot_yield=False):
    JPAfuncDict = {'f1':evaluateJPA_2b2Wj, 
                   'f2':evaluateJPA_2b1Wj, 
                   'f3':evaluateJPA_1b2Wj, 
                   'f4':evaluateJPA_2b0Wj, 
                   'f5':evaluateJPA_1b1Wj, 
                   'f6':evaluateJPA_1b0Wj}

    JPAMaxScoreList = []
    bestCombo_per_cat = []
    
    combo2_1b0W_1Wj = op.combine(jets, N=2, samePred=lambda j1,j2 : j1.idx != j2.idx)
    combo2_2b0Wj    = op.combine(jets, N=2, pred=lambda j1,j2 : j1.pt > j2.pt,  samePred=lambda j1,j2 : j1.idx != j2.idx)
    combo3_1b2Wj    = op.combine(jets, N=3, pred=lambda j1,j2,j3 : j2.pt > j3.pt,  samePred=lambda j1,j2 : j1.idx != j2.idx)
    combo3_2b1Wj    = op.combine(jets, N=3, pred=lambda j1,j2,j3 : j1.pt > j2.pt,  samePred=lambda j1,j2 : j1.idx != j2.idx)
    combo4          = op.combine(jets, N=4, pred=lambda j1,j2,j3,j4 : op.AND(j1.pt > j2.pt, j3.pt > j4.pt), samePred=lambda j1,j2 : j1.idx != j2.idx)

    funckeys = [k for k in JPAfuncDict.keys()]
    
    for idx, func in enumerate(funckeys):
        node        = nodeList[idx]
        modelpaths  = modelPathDict.get(node)
        model = makeOddEvenEvaluator(event%2, modelpaths[1], modelpaths[0], mvaType="TMVA")
        lambdaFunc = lambda jetCombo : JPAfuncDict[func](lepton, muons, electrons, jets, jetCombo, bJetsL, bJetsM, met, model, HLL)
        
        if idx == 0:
            best = op.rng_max_element_by(combo4, lambdaFunc)
            maxScore = op.switch(best.idx != -1, best.idx.op.this.result.second, op.c_float(-1.)) 
            #best.idx.op.this.canDefine=False
        elif idx == 1:
            best = op.rng_max_element_by(combo3_2b1Wj, lambdaFunc)            ## hack: index of best is first in a pair, with the maximum value as second
            maxScore = best.idx.op.this.result.second
        elif idx == 2:
            best = op.rng_max_element_by(combo3_1b2Wj, lambdaFunc)            ## hack: index of best is first in a pair, with the maximum value as second
            maxScore = best.idx.op.this.result.second
        elif idx == 3:
            best = op.rng_max_element_by(combo2_2b0Wj, lambdaFunc)            ## hack: index of best is first in a pair, with the maximum value as second
            maxScore = best.idx.op.this.result.second
        elif idx == 4:
            best = op.rng_max_element_by(combo2_1b0W_1Wj, lambdaFunc)            ## hack: index of best is first in a pair, with the maximum value as second
            maxScore = best.idx.op.this.result.second
        else:
            best = op.rng_max_element_by(combo2_1b0W_1Wj, lambdaFunc)            ## hack: index of best is first in a pair, with the maximum value as second
            maxScore = best.idx.op.this.result.second
            
        JPAMaxScoreList.append(op.pow((1.0 + op.sqrt((1 - maxScore)/(1 + maxScore))), -1))
        #JPAMaxScoreList.append(maxScore)
        bestCombo_per_cat.append(best)

    evtCat = makeOddEvenEvaluator(event%2, modelPathDict.get('evCat')[1], modelPathDict.get('evCat')[0], mvaType="TMVA")
    
    evtCatOutList = evtCat(*JPAMaxScoreList)
    maxIdx = op.rng_max_element_index(evtCatOutList)

    newSelObj  = copy(selObj)
    selObjJPAjetsIdxDict = {}

    for i, node in enumerate(nodeList):
        outSelObj = copy(newSelObj)
        outSelObj.selName += '%s'%node
        outSelObj.yieldTitle += " in %s node"%node 
        outSelObj.refine(cut = (maxIdx == i)) 
        if i < 6:
            selObjJPAjetsIdxDict[node] = [outSelObj, bestCombo_per_cat[i]]
        else:
            selObjJPAjetsIdxDict[node] = [outSelObj, None]

    return JPAMaxScoreList, evtCatOutList, selObjJPAjetsIdxDict
예제 #11
0
    def __init__(self, HHself):
        # All the attributes of the BaseHH are contained in HHself object
        # All the lambdas will be saved in the highlevelLambdas object to avoid confusions of all the attributes of HH base object

        # conept #
        self.conept = lambda lep: op.switch(
            op.abs(lep.pdgId) == 11, HHself.electron_conept[lep.idx], HHself.
            muon_conept[lep.idx])

        self.electron_conept = lambda ele: HHself.electron_conept[ele.idx]
        self.muon_conept = lambda mu: HHself.muon_conept[mu.idx]

        # 4-Momentum association #
        self.ll_p4 = lambda l1, l2: l1.p4 + l2.p4
        self.lljj_p4 = lambda l1, l2, j1, j2: l1.p4 + l2.p4 + j1.p4 + j2.p4
        self.lep1j_p4 = lambda lep, j1: lep.p4 + j1.p4
        self.lep2j_p4 = lambda lep, j1, j2: lep.p4 + j1.p4 + j2.p4
        self.lep3j_p4 = lambda lep, j1, j2, j3: lep.p4 + j1.p4 + j2.p4 + j3.p4
        self.lep4j_p4 = lambda lep, j1, j2, j3, j4: lep.p4 + j1.p4 + j2.p4 + j3.p4 + j4.p4

        # bReg corr 4 momenta of ak4-bTagged jet #
        self.bJetCorrP4 = lambda j: op._to.Construct(
            "ROOT::Math::LorentzVector<ROOT::Math::PtEtaPhiM4D<float> >",
            (j.pt * j.bRegCorr, j.eta, j.phi, j.mass * j.bRegCorr)).result

        # Dilep-Met variables #
        self.DilepMET_deltaPhi = lambda l1, l2, met: self.ll_p4(l1, l2).Phi(
        ) - met.phi
        self.DilepMET_Pt = lambda l1, l2, met: op.sqrt(
            op.pow(met.pt * op.cos(met.phi) + self.ll_p4(l1, l2).Px(), 2) + op.
            pow(met.pt * op.sin(met.phi) + self.ll_p4(l1, l2).Py(), 2))
        # SingleLep-Met variables
        #self.SinglepMet_Pt = lambda lep,met : op.sqrt(op.pow(met.pt*op.cos(met.phi)+lep.p4.Px(),2)+op.pow(met.pt*op.sin(met.phi)+lep.p4.Py(),2))
        self.SinglepMet_Pt = lambda lep, met: (lep.p4 + met.p4).Pt()
        #self.SinglepMet_dPhi = lambda lep, met : lep.p4.Phi()-met.phi
        self.SinglepMet_dPhi = lambda lep, met: op.deltaPhi(lep.p4, met.p4)

        # Transverse mass #
        self.MT_ll = lambda l1, l2, met: op.sqrt(2 * self.ll_p4(l1, l2).Pt(
        ) * met.pt * (1 - op.cos(self.ll_p4(l1, l2).Phi() - met.phi)))
        self.MT_lljj = lambda l1, l2, j1, j2, met: op.sqrt(
            2 * self.lljj_p4(l1, l2, j1, j2).Pt() * met.pt *
            (1 - op.cos(self.lljj_p4(l1, l2, j1, j2).Phi() - met.phi)))
        self.MT = lambda lep, met: op.sqrt(2 * lep.p4.Pt() * met.pt * (
            1 - op.cos(lep.p4.Phi() - met.phi)))
        self.MT_W1W2_ljj = lambda lep, j1, j2, met: op.sqrt(
            2 * self.lep2j_p4(lep, j1, j2).Pt() * met.pt *
            (1 - op.cos(self.lep2j_p4(lep, j1, j2).Phi() - met.phi)))
        self.MT_W1W2_lj = lambda lep, j1, met: op.sqrt(
            2 * self.lep1j_p4(lep, j1).Pt() * met.pt *
            (1 - op.cos(self.lep1j_p4(lep, j1).Phi() - met.phi)))
        # TODO : clean different versions (eg MT)

        # dilep + dijet #
        self.M_lljj = lambda l1, l2, j1, j2: op.invariant_mass(
            self.lljj_p4(l1, l2, j1, j2))
        self.M_HH = lambda l1, l2, j1, j2, met: op.invariant_mass(
            l1.p4, l2.p4, j1.p4, j2.p4, met.p4)
        self.MinDR_lj = lambda l1, l2, j1, j2: op.min(
            op.min(op.deltaR(l1.p4, j1.p4), op.deltaR(l1.p4, j2.p4)),
            op.min(op.deltaR(l2.p4, j1.p4), op.deltaR(l2.p4, j2.p4)))
        self.MinDR_part1_partCont = lambda part1, partCont: op.rng_min(
            partCont, lambda part2: op.deltaR(part1.p4, part2.p4))
        self.MinDEta_part1_partCont = lambda part1, partCont: op.rng_min(
            partCont, lambda part2: op.abs(part1.eta - part2.eta))
        self.MinDPhi_part1_partCont = lambda part1, partCont: op.rng_min(
            partCont, lambda part2: op.abs(op.deltaPhi(part1.p4, part2.p4)))

        self.MinDR_part1_dipart = lambda part1, dipart: op.min(*(
            op.deltaR(part1.p4, dipart[i2].p4) for i2 in range(2)))

        self.JetsMinDR = lambda l, j1, j2: op.min(op.deltaR(l.p4, j1.p4),
                                                  op.deltaR(l.p4, j2.p4))
        self.LepsMinDR = lambda j, l1, l2: op.min(op.deltaR(j.p4, l1.p4),
                                                  op.deltaR(j.p4, l2.p4))

        self.MinDR_lep3j = lambda lep, j1, j2, j3: op.min(
            op.min(op.deltaR(lep.p4, j1.p4), op.deltaR(lep.p4, j2.p4)),
            op.deltaR(lep.p4, j3.p4))

        self.MinDR_lj = lambda l1, l2, j1, j2: op.min(
            op.min(op.deltaR(l1.p4, j1.p4), op.deltaR(l1.p4, j2.p4)),
            op.min(op.deltaR(l2.p4, j1.p4), op.deltaR(l2.p4, j2.p4)))

        self.MinDR_lep2j = lambda lep, j1, j2: op.min(op.deltaR(lep.p4, j1.p4),
                                                      op.deltaR(lep.p4, j2.p4))
        self.MinDR_lep3j = lambda lep, j1, j2, j3: op.min(
            op.min(op.deltaR(lep.p4, j1.p4), op.deltaR(lep.p4, j2.p4)),
            op.deltaR(lep.p4, j3.p4))
        self.MinDR_lep4j = lambda lep, j1, j2, j3, j4: op.min(
            op.min(op.min(op.deltaR(lep.p4, j1.p4), op.deltaR(lep.p4, j2.p4)),
                   op.deltaR(lep.p4, j3.p4)), op.deltaR(lep.p4, j4.p4))
        self.MinDPhi_lep2j = lambda lep, j1, j2: op.min(
            op.abs(op.deltaPhi(lep.p4, j1.p4)),
            op.abs(op.deltaPhi(lep.p4, j2.p4)))
        self.MinDPhi_lep3j = lambda lep, j1, j2, j3: op.min(
            op.min(op.abs(op.deltaPhi(lep.p4, j1.p4)),
                   op.abs(op.deltaPhi(lep.p4, j2.p4))),
            op.abs(op.deltaPhi(lep.p4, j3.p4)))
        self.MinDPhi_lep4j = lambda lep, j1, j2, j3, j4: op.min(
            op.min(
                op.min(op.abs(op.deltaPhi(lep.p4, j1.p4)),
                       op.abs(op.deltaPhi(lep.p4, j2.p4))),
                op.abs(op.deltaPhi(lep.p4, j3.p4))),
            op.abs(op.deltaPhi(lep.p4, j4.p4)))
        self.MinDEta_lep2j = lambda lep, j1, j2: op.min(
            op.abs(lep.eta - j1.eta), op.abs(lep.eta - j2.eta))
        self.MinDEta_lep3j = lambda lep, j1, j2, j3: op.min(
            op.min(op.abs(lep.eta - j1.eta), op.abs(lep.eta - j2.eta)),
            op.abs(lep.eta - j3.eta))
        self.MinDEta_lep4j = lambda lep, j1, j2, j3, j4: op.min(
            op.min(op.min(op.abs(lep.eta - j1.eta), op.abs(lep.eta - j2.eta)),
                   op.abs(lep.eta - j3.eta)), op.abs(lep.eta - j4.eta))

        self.MaxDR_lep2j = lambda lep, j1, j2: op.max(op.deltaR(lep.p4, j1.p4),
                                                      op.deltaR(lep.p4, j2.p4))
        self.MaxDR_lep3j = lambda lep, j1, j2, j3: op.max(
            op.max(op.deltaR(lep.p4, j1.p4), op.deltaR(lep.p4, j2.p4)),
            op.deltaR(lep.p4, j3.p4))
        self.MaxDR_lep4j = lambda lep, j1, j2, j3, j4: op.max(
            op.max(op.max(op.deltaR(lep.p4, j1.p4), op.deltaR(lep.p4, j2.p4)),
                   op.deltaR(lep.p4, j3.p4)), op.deltaR(lep.p4, j4.p4))
        self.MaxDPhi_lep2j = lambda lep, j1, j2: op.max(
            op.abs(op.deltaPhi(lep.p4, j1.p4)),
            op.abs(op.deltaPhi(lep.p4, j2.p4)))
        self.MaxDPhi_lep3j = lambda lep, j1, j2, j3: op.max(
            op.max(op.abs(op.deltaPhi(lep.p4, j1.p4)),
                   op.abs(op.deltaPhi(lep.p4, j2.p4))),
            op.abs(op.deltaPhi(lep.p4, j3.p4)))
        self.MaxDPhi_lep4j = lambda lep, j1, j2, j3, j4: op.max(
            op.max(
                op.max(op.abs(op.deltaPhi(lep.p4, j1.p4)),
                       op.abs(op.deltaPhi(lep.p4, j2.p4))),
                op.abs(op.deltaPhi(lep.p4, j3.p4))),
            op.abs(op.deltaPhi(lep.p4, j4.p4)))
        self.MaxDEta_lep2j = lambda lep, j1, j2: op.max(
            op.abs(lep.eta - j1.eta), op.abs(lep.eta - j2.eta))
        self.MaxDEta_lep3j = lambda lep, j1, j2, j3: op.max(
            op.max(op.abs(lep.eta - j1.eta), op.abs(lep.eta - j2.eta)),
            op.abs(lep.eta - j3.eta))
        self.MaxDEta_lep4j = lambda lep, j1, j2, j3, j4: op.max(
            op.max(op.max(op.abs(lep.eta - j1.eta), op.abs(lep.eta - j2.eta)),
                   op.abs(lep.eta - j3.eta)), op.abs(lep.eta - j4.eta))

        # Higgs related variables #
        #self.HT2 = lambda l1,l2,j1,j2,met : op.sqrt(op.pow(met.pt*op.cos(met.phi)+l1.p4.Px()+l2.p4.Px(),2)+op.pow(met.pt*op.sin(met.phi)+l1.p4.Py()+l2.p4.Py(),2)) + op.abs((j1.p4+j2.p4).Pt())
        #self.HT2R = lambda l1,l2,j1,j2,met : self.HT2(met,l1,l2,j1,j2)/(met.pt+l1.p4.Pt()+l2.p4.Pt()+j1.p4.Pt()+j2.p4.Pt())
        #self.HT2_l1jmet  = lambda l,j1,met : op.sqrt(op.pow(met.pt*op.cos(met.phi)+l.p4.Px(),2)+op.pow(met.pt*op.sin(met.phi)+l.p4.Py(),2)) + op.abs(j1.p4.Pt())
        #self.HT2R_l1jmet = lambda l,j1,met : self.HT2_l1jmet(l,j1,met)/(met.pt+l.p4.Pt()+j1.p4.Pt())
        #self.HT2_l2jmet  = lambda l,j1,j2,met : op.sqrt(op.pow(met.pt*op.cos(met.phi)+l.p4.Px(),2)+op.pow(met.pt*op.sin(met.phi)+l.p4.Py(),2)) + op.abs((j1.p4+j2.p4).Pt())
        #self.HT2R_l2jmet = lambda l,j1,j2,met : self.HT2_l2jmet(l,j1,j2,met)/(met.pt+l.p4.Pt()+j1.p4.Pt()+j2.p4.Pt())
        #self.HT2_l3jmet  = lambda l,j1,j2,j3,met : op.sqrt(op.pow(met.pt*op.cos(met.phi)+l.p4.Px(),2)+op.pow(met.pt*op.sin(met.phi)+l.p4.Py(),2)) + op.abs((j1.p4+j2.p4+j3.p4).Pt())

        self.HT_SL = lambda jets: op.rng_sum(jets, lambda j: j.pt)
        # 0b
        self.HT2_0b = lambda l, met: op.abs((met.p4 + l.p4).Pt())
        self.HT2R_0b = lambda l, met: self.HT2_0b(l, met) / (met.pt + l.pt)

        # 1b0Wj
        self.HT2_1b0Wj = lambda l, j1, met: op.abs(
            (met.p4 + l.p4).Pt()) + j1.pt
        self.HT2R_1b0Wj = lambda l, j1, met: self.HT2_1b0Wj(l, j1, met) / (
            met.pt + l.pt + j1.pt)

        # 1b1Wj
        self.HT2_1b1Wj = lambda l, j1, j3, met: op.abs(
            (met.p4 + l.p4 + j3.p4).Pt()) + j1.pt
        self.HT2R_1b1Wj = lambda l, j1, j3, met: self.HT2_1b1Wj(
            l, j1, j3, met) / (met.pt + l.pt + j1.pt + j3.pt)

        #2b0Wj
        self.HT2_2b0Wj = lambda l, j1, j2, met: op.abs(
            (met.p4 + l.p4).Pt()) + op.abs((j1.p4 + j2.p4).Pt())
        self.HT2R_2b0Wj = lambda l, j1, j2, met: self.HT2_2b0Wj(
            l, j1, j2, met) / (met.pt + l.pt + j1.pt + j2.pt)

        # 1b2Wj
        self.HT2_1b2Wj = lambda l, j1, j3, j4, met: op.abs(
            (met.p4 + l.p4 + j3.p4 + j4.p4).Pt()) + j1.pt
        self.HT2R_1b2Wj = lambda l, j1, j3, j4, met: self.HT2_1b2Wj(
            l, j1, j3, j4, met) / (met.pt + l.pt + j1.pt + j3.pt + j4.pt)

        # 2b1Wj
        self.HT2_2b1Wj = lambda l, j1, j2, j3, met: op.abs(
            (met.p4 + l.p4 + j3.p4).Pt()) + op.abs((j1.p4 + j2.p4).Pt())
        self.HT2R_2b1Wj = lambda l, j1, j2, j3, met: self.HT2_2b1Wj(
            l, j1, j2, j3, met) / (met.pt + l.pt + j1.pt + j2.pt + j3.pt)

        #self.HT2_l4jmet  = lambda l,j1,j2,j3,j4,met : op.sqrt(op.pow(met.pt*op.cos(met.phi)+l.p4.Px(),2)+op.pow(met.pt*op.sin(met.phi)+l.p4.Py(),2)) + op.abs((j1.p4+j2.p4+j3.p4+j4.p4).Pt())
        # 2b2Wj
        self.HT2_2b2Wj = lambda l, j1, j2, j3, j4, met: op.abs(
            (met.p4 + l.p4 + j3.p4 + j4.p4).Pt()) + op.abs(
                (j1.p4 + j2.p4).Pt())
        self.HT2R_2b2Wj = lambda l, j1, j2, j3, j4, met: self.HT2_2b2Wj(
            l, j1, j2, j3, j4, met) / (met.pt + l.pt + j1.pt + j2.pt + j3.pt +
                                       j4.pt)

        #min j1j2DR
        self.MinDiJetDRLoose = lambda j1, j2, j3: op.min(
            op.min(op.deltaR(j1.p4, j2.p4), op.deltaR(j2.p4, j3.p4)),
            op.deltaR(j1.p4, j3.p4))
        self.MinDiJetDRTight = lambda j1, j2, j3, j4: op.min(
            op.min(
                op.min(self.MinDiJetDRLoose(j1, j2, j3), op.deltaR(
                    j1.p4, j4.p4)), op.deltaR(j2.p4, j4.p4)),
            op.deltaR(j3.p4, j4.p4))
        self.MinDiJetDEtaLoose = lambda j1, j2, j3: op.min(
            op.min(op.abs(j1.eta - j2.eta), op.abs(j2.eta - j3.eta)),
            op.abs(j1.eta - j3.eta))
        self.MinDiJetDEtaTight = lambda j1, j2, j3, j4: op.min(
            op.min(
                op.min(self.MinDiJetDEtaLoose(j1, j2, j3),
                       op.abs(j1.eta - j4.eta)), op.abs(j2.eta - j4.eta)),
            op.abs(j3.eta - j4.eta))
        self.MinDiJetDPhiLoose = lambda j1, j2, j3: op.min(
            op.min(op.abs(op.deltaPhi(j1.p4, j2.p4)),
                   op.abs(op.deltaPhi(j2.p4, j3.p4))),
            op.abs(op.deltaPhi(j1.p4, j3.p4)))
        self.MinDiJetDPhiTight = lambda j1, j2, j3, j4: op.min(
            op.min(
                op.min(self.MinDiJetDPhiLoose(j1, j2, j3),
                       op.abs(op.deltaPhi(j1.p4, j4.p4))),
                op.abs(op.deltaPhi(j2.p4, j4.p4))),
            op.abs(op.deltaPhi(j3.p4, j4.p4)))

        self.MaxDiJetDRLoose = lambda j1, j2, j3: op.max(
            op.max(op.deltaR(j1.p4, j2.p4), op.deltaR(j2.p4, j3.p4)),
            op.deltaR(j1.p4, j3.p4))
        self.MaxDiJetDRTight = lambda j1, j2, j3, j4: op.max(
            op.max(
                op.max(self.MaxDiJetDRLoose(j1, j2, j3), op.deltaR(
                    j1.p4, j4.p4)), op.deltaR(j2.p4, j4.p4)),
            op.deltaR(j3.p4, j4.p4))
        self.MaxDiJetDEtaLoose = lambda j1, j2, j3: op.max(
            op.max(op.abs(j1.eta - j2.eta), op.abs(j2.eta - j3.eta)),
            op.abs(j1.eta - j3.eta))
        self.MaxDiJetDEtaTight = lambda j1, j2, j3, j4: op.max(
            op.max(
                op.max(self.MaxDiJetDEtaLoose(j1, j2, j3),
                       op.abs(j1.eta - j4.eta)), op.abs(j2.eta - j4.eta)),
            op.abs(j3.eta - j4.eta))
        self.MaxDiJetDPhiLoose = lambda j1, j2, j3: op.max(
            op.max(op.abs(op.deltaPhi(j1.p4, j2.p4)),
                   op.abs(op.deltaPhi(j2.p4, j3.p4))),
            op.abs(op.deltaPhi(j1.p4, j3.p4)))
        self.MaxDiJetDPhiTight = lambda j1, j2, j3, j4: op.max(
            op.max(
                op.max(self.MaxDiJetDPhiLoose(j1, j2, j3),
                       op.abs(op.deltaPhi(j1.p4, j4.p4))),
                op.abs(op.deltaPhi(j2.p4, j4.p4))),
            op.abs(op.deltaPhi(j3.p4, j4.p4)))

        # ------------------------------------ lambdas for BDT variables ------------------------------------ #
        # min jet-lep DR
        self.mindr_lep1_jet = lambda lep, jets: op.deltaR(
            lep.p4,
            op.sort(jets, lambda j: op.deltaR(lep.p4, j.p4))[0].p4)

        # HT
        self.HTfull = lambda fleps, j1p4, j2p4, j3p4, j4p4: j1p4.Pt(
        ) + j2p4.Pt() + j3p4.Pt() + j4p4.Pt() + op.rng_sum(
            fleps, lambda l: l.p4.Pt())
        self.HTmiss = lambda fleps, j1p4, j2p4, j3p4: j1p4.Pt() + j2p4.Pt(
        ) + j3p4.Pt() + op.rng_sum(fleps, lambda l: l.p4.Pt())

        # mT2
        ET = lambda lepp4: op.sqrt(
            op.pow(lepp4.M(), 2) + op.pow(lepp4.Pt(), 2))
        self.mT2 = lambda jetp4, lepp4, metp4: (
            op.pow(jetp4.M(), 2) + op.pow(lepp4.M(), 2) + op.pow(metp4.M(), 2)
            + 2 * (ET(lepp4) * ET(jetp4) -
                   (lepp4.Px() * jetp4.Px() + lepp4.Py() * jetp4.Py())) + 2 *
            (ET(lepp4) * ET(metp4) -
             (lepp4.Px() * metp4.Px() + lepp4.Py() * metp4.Py())) + 2 *
            (ET(jetp4) * ET(metp4) -
             (jetp4.Px() * metp4.Px() + jetp4.Py() * metp4.Py())))

        # pZ component of met
        # https://github.com/HEP-KBFI/hh-bbww/blob/f4ab60f81a920268a3f2187b97a58ec449b26883/src/comp_metP4_B2G_18_008.cc
        # some necessary constants (visP4 = lepP4 + Wjj_simple)
        # - - - - - used to compute neuP4 - - - - - #
        ax = lambda visP4, met: 125.18 * 125.18 - op.pow(visP4.M(
        ), 2) + 2. * visP4.Px() * met.p4.Px() + 2. * visP4.Py() * met.p4.Py()
        A = lambda visP4: 4.0 * op.pow(visP4.E(), 2) - op.pow(visP4.Pz(), 2)
        B = lambda visP4, met: -4.0 * ax(visP4, met) * visP4.Pz()
        C = lambda visP4, met: 4.0 * op.pow(visP4.E(), 2) * (op.pow(
            met.p4.Px(), 2) + op.pow(met.p4.Py(), 2)) - op.pow(
                ax(visP4, met), 2)
        D = lambda visP4, met: (op.pow(B(visP4, met), 2) - 4.0 * A(visP4) * C(
            visP4, met))
        pos = lambda visP4, met: (-B(visP4, met) + op.sqrt(D(visP4, met))) / (
            2. * A(visP4))
        neg = lambda visP4, met: (-B(visP4, met) - op.sqrt(D(visP4, met))) / (
            2. * A(visP4))
        neuPz = lambda visP4, met: (op.switch(
            D(visP4, met) < 0., -B(visP4, met) / (2 * A(visP4)),
            op.switch(
                op.abs(pos(visP4, met)) < op.abs(neg(visP4, met)),
                pos(visP4, met), neg(visP4, met))))
        # - - - - - - - - - - - - - - - - - - - - - #
        self.neuP4 = lambda visP4, met: op._to.Construct(
            "ROOT::Math::LorentzVector<ROOT::Math::PxPyPzE4D<float> >",
            (met.p4.Px(), met.p4.Py(), neuPz(visP4, met),
             op.sqrt(
                 op.pow(met.p4.Px(), 2) + op.pow(met.p4.Py(), 2) + op.pow(
                     neuPz(visP4, met), 2)))).result

        # P4 of W1 (l,neu)
        self.Wlep_simple = lambda wj1P4, wj2P4, lepP4, met: lepP4 + self.neuP4(
            wj1P4 + wj2P4 + lepP4, met)
        # P4 of W2 (j,j)
        self.Wjj_simple = lambda j1P4, j2P4: j1P4 + j2P4
        # DR_HadW_bJet
        self.dR_HadW_bjet = lambda bP4, j1P4, j2P4: op.deltaR(
            self.Wjj_simple(j1P4, j2P4), bP4)
        # P4 of HWW (W1 + W2)
        self.HWW_simple = lambda wj1P4, wj2P4, lepP4, met: self.Wjj_simple(
            wj1P4, wj2P4) + self.Wlep_simple(wj1P4, wj2P4, lepP4, met)
        # dR_HWW
        self.dR_Hww = lambda j1P4, j2P4, lepP4, met: op.deltaR(
            self.Wjj_simple(j1P4, j2P4),
            self.Wlep_simple(j1P4, j2P4, lepP4, met))
        self.dEta_Hww = lambda j1P4, j2P4, lepP4, met: op.abs(
            self.Wjj_simple(j1P4, j2P4).Eta() - self.Wlep_simple(
                j1P4, j2P4, lepP4, met).Eta())
        self.dPhi_Hww = lambda j1P4, j2P4, lepP4, met: op.abs(
            op.deltaPhi(self.Wjj_simple(j1P4, j2P4),
                        self.Wlep_simple(j1P4, j2P4, lepP4, met)))
        # P4 of lep + met
        self.Wlep_met_simple = lambda lepP4, metP4: lepP4 + metP4
        # SimpleP4 of HWW (W1 + W2)
        self.HWW_met_simple = lambda j1P4, j2P4, lepP4, metP4: self.Wjj_simple(
            j1P4, j2P4) + self.Wlep_met_simple(lepP4, metP4)
        # Total P4
        self.HHP4_simple_met = lambda HbbRegP4, j1P4, j2P4, lepP4, metP4: HbbRegP4 + self.Wjj_simple(
            j1P4, j2P4) + self.Wlep_met_simple(lepP4, metP4)

        # CosThetaS calculation
        #comp_cosThetaS = lambda ob1p4, ob2p4 : op.abs(ob1p4.Boost(-(ob1p4+ob2p4).BoostVector()).CosTheta())
        motherPx = lambda ob1p4, ob2p4: (ob1p4.Px() + ob2p4.Px())
        motherPy = lambda ob1p4, ob2p4: (ob1p4.Py() + ob2p4.Py())
        motherPz = lambda ob1p4, ob2p4: (ob1p4.Pz() + ob2p4.Pz())
        motherE = lambda ob1p4, ob2p4: (ob1p4.E() + ob2p4.E())
        betaX = lambda ob1p4, ob2p4: motherPx(ob1p4, ob2p4) / motherE(
            ob1p4, ob2p4)
        betaY = lambda ob1p4, ob2p4: motherPy(ob1p4, ob2p4) / motherE(
            ob1p4, ob2p4)
        betaZ = lambda ob1p4, ob2p4: motherPz(ob1p4, ob2p4) / motherE(
            ob1p4, ob2p4)
        beta2 = lambda ob1p4, ob2p4: op.pow(betaX(ob1p4, ob2p4), 2) + op.pow(
            betaY(ob1p4, ob2p4), 2) + op.pow(betaZ(ob1p4, ob2p4), 2)
        gamma = lambda ob1p4, ob2p4: 1.0 / op.sqrt(1 - beta2(ob1p4, ob2p4))
        betap = lambda ob1p4, ob2p4: betaX(ob1p4, ob2p4) * motherPx(
            ob1p4, ob2p4) + betaY(ob1p4, ob2p4) * motherPy(
                ob1p4, ob2p4) + betaZ(ob1p4, ob2p4) * motherPz(ob1p4, ob2p4)
        gamma2 = lambda ob1p4, ob2p4: op.switch(
            beta2(ob1p4, ob2p4) > 0,
            (gamma(ob1p4, ob2p4) - 1) / beta2(ob1p4, ob2p4), op.c_float(0.0))
        boostPx = lambda ob1p4, ob2p4: ob1p4.Px() + gamma2(
            ob1p4, ob2p4) * betap(ob1p4, ob2p4) * betaX(ob1p4, ob2p4) + gamma(
                ob1p4, ob2p4) * betaX(ob1p4, ob2p4) * ob1p4.E()
        boostPy = lambda ob1p4, ob2p4: ob1p4.Px() + gamma2(
            ob1p4, ob2p4) * betap(ob1p4, ob2p4) * betaY(ob1p4, ob2p4) + gamma(
                ob1p4, ob2p4) * betaY(ob1p4, ob2p4) * ob1p4.E()
        boostPz = lambda ob1p4, ob2p4: ob1p4.Pz() + gamma2(
            ob1p4, ob2p4) * betap(ob1p4, ob2p4) * betaZ(ob1p4, ob2p4) + gamma(
                ob1p4, ob2p4) * betaZ(ob1p4, ob2p4) * ob1p4.E()
        boostP = lambda ob1p4, ob2p4: op.sqrt(
            op.pow(boostPx(ob1p4, ob2p4), 2) + op.pow(boostPy(ob1p4, ob2p4), 2)
            + op.pow(boostPz(ob1p4, ob2p4), 2))
        self.comp_cosThetaS = lambda ob1p4, ob2p4: op.abs(
            boostPz(ob1p4, ob2p4) / boostP(ob1p4, ob2p4))

        #BoostP3  = lambda ob1p4,ob2p4 : op._to.Construct("ROOT::Math::TVector<ROOT::Math::PxPyPz3D<float>>",(-motherPx(ob1p4,ob2p4), -motherPy(ob1p4,ob2p4), -motherPz(ob1p4,ob2p4))).result
        #boost = lambda ob1p4,ob2p4 : op.construct("ROOT::Math::Boost", (-motherPx(ob1p4,ob2p4)/motherE(ob1p4,ob2p4),
        #                                                                -motherPy(ob1p4,ob2p4)/motherE(ob1p4,ob2p4),
        #                                                                -motherPz(ob1p4,ob2p4)/motherE(ob1p4,ob2p4)))
        #self.comp_cosThetaS = lambda ob1p4,ob2p4 : op.abs(boost(ob1p4,ob2p4)(ob1p4).CosTheta())

        #p4_boosted = lambda ob1p4,ob2p4 : op.extMethod("ROOT::Math::Boost{-motherPx(ob1p4,ob2p4)/motherE(ob1p4,ob2p4), -motherPy(ob1p4,ob2p4)/motherE(ob1p4,ob2p4), -motherPz(ob1p4,ob2p4)/motherE(ob1p4,ob2p4)}", returnType=(ob1p4+ob2p4)._typeName)(ob1p4+ob2p4)
        #self.comp_cosThetaS = lambda ob1p4,ob2p4 : op.deltaR(ob1p4, p4_boosted(ob1p4,ob2p4))

        #boost = lambda ob1p4, ob2p4: op.construct("ROOT::Math::Boost", (-betaX(ob1p4, ob2p4), -betaY(ob1p4, ob2p4), -betaZ(ob1p4, ob2p4)))
        #boostP4 = lambda ob1p4,ob2p4 : boost(ob1p4,ob2p4)(ob1p4)
        #self.comp_cosThetaS = lambda ob1p4,ob2p4 : op.abs(boostP4(ob1p4,ob2p4).Pz()/op.sqrt(op.pow(boostP4(ob1p4,ob2p4).Px(),2) + op.pow(boostP4(ob1p4,ob2p4).Py(),2) + op.pow(boostP4(ob1p4,ob2p4).Pz(),2)))

        # MET_LD
        # Equation 3 (page 33) of AN-2019/111 v13
        # Similar to MET, but more robust against pileup
        jetSumPx = lambda jets: op.rng_sum(jets, lambda j: j.p4.Px())
        jetSumPy = lambda jets: op.rng_sum(jets, lambda j: j.p4.Py())
        #lepSumPx = lambda leps : op.rng_sum(leps, lambda l : l.p4.Px())
        #lepSumPy = lambda leps : op.rng_sum(leps, lambda l : l.p4.Py())
        lepSumPx = lambda mus, els: op.rng_sum(mus, lambda l: l.p4.Px(
        )) + op.rng_sum(els, lambda l: l.p4.Px())
        lepSumPy = lambda mus, els: op.rng_sum(mus, lambda l: l.p4.Py(
        )) + op.rng_sum(els, lambda l: l.p4.Py())
        self.MET_LD = lambda met, jets, mus, els: 0.6 * met.pt + 0.4 * op.sqrt(
            op.pow(jetSumPx(jets) + lepSumPx(mus, els), 2) + op.pow(
                jetSumPy(jets) + lepSumPy(mus, els), 2))

        empty_p4 = op.construct(
            "ROOT::Math::LorentzVector<ROOT::Math::PtEtaPhiM4D<float> >",
            ([op.c_float(0.),
              op.c_float(0.),
              op.c_float(0.),
              op.c_float(0.)]))
        self.MET_LD_DL = lambda met, jets, electrons, muons : 0.6 * met.pt +\
                    0.4* (op.rng_sum(jets, (lambda j : j.p4), start=empty_p4) + op.rng_sum(electrons, (lambda e : e.p4), start=empty_p4) + op.rng_sum(muons, (lambda m : m.p4), start=empty_p4)).Pt()

        # conept
        self.lambdaConePt = lambda lep: op.switch(
            op.abs(lep.pdgId) == 13, HHself.muon_conept[lep.idx], HHself.
            electron_conept[lep.idx])

        # angle between 2 planes
        aDotB = lambda a, b: a.Px() * b.Px() + a.Py() * b.Py() + a.Pz() * b.Pz(
        )
        aMagB = lambda a, b: (op.sqrt(
            op.pow(a.Px(), 2) + op.pow(a.Py(), 2) + op.pow(a.Pz(), 2))) * (
                op.sqrt(
                    op.pow(b.Px(), 2) + op.pow(b.Py(), 2) + op.pow(b.Pz(), 2)))
        self.angleWWplane = lambda lp4, met, j3p4, j4p4: op.acos(
            aDotB(j3p4 + j4p4,
                  self.neuP4(j3p4 + j4p4 + lp4, met) + lp4) / aMagB(
                      j3p4 + j4p4,
                      self.neuP4(j3p4 + j4p4 + lp4, met) + lp4))
        #self.angleWWplane = lambda lp4, met, j3p4, j4p4 : ((j3p4+j4p4).Vect().Unit()).Angle((self.neuP4(j3p4+j4p4+lp4, met)+lp4).Vect().Unit())
        self.angleBetPlanes = lambda j1p4, j2p4, j3p4, j4p4: op.acos(
            op.c_float(
                aDotB(j1p4 + j2p4, j3p4 + j4p4) / aMagB(
                    j1p4 + j2p4, j3p4 + j4p4)))

        self.empty_p4 = op.construct(
            "ROOT::Math::LorentzVector<ROOT::Math::PtEtaPhiM4D<float> >",
            ([op.c_float(0.),
              op.c_float(0.),
              op.c_float(0.),
              op.c_float(0.)]))
        self.MET_LD_DL = lambda met, jets, electrons, muons : 0.6 * met.pt +\
                    0.4* (op.rng_sum(jets, (lambda j : j.p4), start=self.empty_p4) + op.rng_sum(electrons, (lambda e : e.p4), start=self.empty_p4) + op.rng_sum(muons, (lambda m : m.p4), start=self.empty_p4)).Pt()

        self.isBoosted = op.AND(
            op.rng_len(HHself.ak8BJets) >= 1,
            op.rng_len(HHself.ak4JetsCleanedFromAk8b) >= 1)
        #self.isBoosted  = op.rng_len(HHself.ak8BJets) >= 1
        self.isResolved = op.AND(
            op.rng_len(HHself.ak4Jets) >= 3,
            op.rng_len(HHself.ak4BJets) >= 1,
            op.rng_len(HHself.ak8BJets) == 0)
        #self.has1Wj     = op.rng_len(HHself.probableWJets) == 1
        #self.has2Wj     = op.rng_len(HHself.wJetsPairs) >= 1
        #self.isFullReco = op.AND(op.rng_len(HHself.bJetsByScore) >= 2, op.rng_len(HHself.wJetsPairs) >= 1)
        #self.isMissReco = op.AND(op.rng_len(HHself.bJetsByScore) >= 2, op.rng_len(HHself.probableWJets) == 1)

        #self.comp_m_hh_bregcorr = lambda bjets, wjets, lep, met : (op.rng_sum(bjets, (lambda bj : self.bJetCorrP4(bj)), start=empty_p4) +
        #                                                           op.rng_sum(wjets, (lambda wj : self.bJetCorrP4(wj)), start=empty_p4) +
        #                                                           met.p4 +
        #                                                           lep.p4).M()
        self.comp_m_hh_bregcorr = lambda bjets, wjets, lepconep4, met: (
            op.rng_sum(bjets, (lambda bj: self.bJetCorrP4(bj)), start=empty_p4)
            + op.rng_sum(wjets, (lambda wj: self.bJetCorrP4(wj)),
                         start=empty_p4) + met.p4 + lepconep4).M()

        #self.comp_pt_hh         = lambda bjets, wjets, lep, met : (op.rng_sum(bjets, (lambda bj : bj.p4), start=empty_p4) +
        #                                                           op.rng_sum(wjets, (lambda wj : wj.p4), start=empty_p4) +
        #                                                           met.p4 +
        #                                                           lep.p4).Pt()
        self.comp_pt_hh = lambda bjets, wjets, lepconep4, met: (op.rng_sum(
            bjets, (lambda bj: bj.p4), start=empty_p4) + op.rng_sum(
                wjets,
                (lambda wj: wj.p4), start=empty_p4) + met.p4 + lepconep4).Pt()
        #self.comp_dphi_hbb_hww  = lambda bjets, wjets, lep, met : op.deltaPhi((op.rng_sum(wjets, (lambda wj : wj.p4), start=empty_p4) + met.p4 + lep.p4),
        #                                                                            op.rng_sum(bjets, (lambda bj : bj.p4), start=empty_p4))
        #self.comp_dphi_hbb_hwwvis = lambda bjets, wjets, lep : op.deltaPhi((op.rng_sum(wjets, (lambda wj : wj.p4), start=empty_p4) + lep.p4),
        #                                                                         op.rng_sum(bjets, (lambda bj : bj.p4), start=empty_p4))
        self.comp_dphi_hbb_hww = lambda bjets, wjets, lepconep4, met: op.deltaPhi(
            (op.rng_sum(wjets, (lambda wj: wj.p4), start=empty_p4) + met.p4 +
             lepconep4), op.rng_sum(bjets, (lambda bj: bj.p4), start=empty_p4))
        self.comp_dphi_hbb_hwwvis = lambda bjets, wjets, lepconep4: op.deltaPhi(
            (op.rng_sum(wjets,
                        (lambda wj: wj.p4), start=empty_p4) + lepconep4),
            op.rng_sum(bjets, (lambda bj: bj.p4), start=empty_p4))
예제 #12
0
    def definePlots(self, tree, noSel, sample=None, sampleCfg=None):
        plots = []

        muons = op.sort(op.select(tree.Muon, lambda mu : op.AND(
            mu.pt > 5,
            op.abs(mu.eta) < 2.4,
            op.abs(mu.pfRelIso04_all) < 0.40,
            op.abs(mu.dxy) < 0.5,
            op.abs(mu.dz ) < 1.,
            op.sqrt(mu.dxy**2 + mu.dz**2)/op.sqrt(mu.dxyErr**2+mu.dzErr**2) < 4, ## SIP3D
            )), lambda mu : -mu.pt)
        electrons = op.sort(op.select(tree.Electron, lambda el : op.AND(
            el.pt > 7.,
            op.abs(el.eta) < 2.5,
            op.abs(el.pfRelIso03_all) < 0.40,
            op.abs(el.dxy) < 0.5,
            op.abs(el.dz ) < 1.,
            op.sqrt(el.dxy**2 + el.dz**2)/op.sqrt(el.dxyErr**2+el.dzErr**2) < 4, ## SIP3D
            )), lambda el : -el.pt)

        plots += self.controlPlots_2l(noSel, muons, electrons)

        mZ = 91.1876

        def reco_4l(leptons, lName, baseSel):
            ## select events with four leptons, and find the best Z candidate
            ## shared between 4el and 4mu
            has4l = baseSel.refine(f"has4{lName}", cut=[
                op.rng_len(leptons) == 4,
                op.rng_sum(leptons, lambda l : l.charge) == 0,
                ])
            allZcand = op.combine(leptons, N=2, pred=lambda l1,l2 : l1.charge != l2.charge)
            bestZ = op.rng_min_element_by(allZcand, lambda ll : op.abs(op.invariant_mass(ll[0].p4, ll[1].p4)-mZ))
            otherLeptons = op.select(leptons, partial(lambda l,oz=None : op.AND(l.idx != oz[0].idx, l.idx != oz[1].idx), oz=bestZ))
            return has4l, bestZ, otherLeptons

        ## Mixed category: take leading two for each (as in the other implementations
        def cuts2lMixed(leptons):
            return [ op.rng_len(leptons) == 2,
                     leptons[0].charge != leptons[1].charge,
                     leptons[0].pt > 20.,
                     leptons[1].pt > 10.
                   ]
        has4lMixed = noSel.refine(f"has4lMixed", cut=cuts2lMixed(muons)+cuts2lMixed(electrons))
        mixed_mElEl = op.invariant_mass(electrons[0].p4, electrons[1].p4)
        mixed_mMuMu = op.invariant_mass(muons[0].p4, muons[1].p4)
        ## two categories: elel closest to Z or mumu closest to Z
        has2El2Mu = has4lMixed.refine(f"has2El2Mu", cut=(op.abs(mixed_mElEl-mZ) < op.abs(mixed_mMuMu-mZ)))
        has2Mu2El = has4lMixed.refine(f"has2Mu2El", cut=(op.abs(mixed_mElEl-mZ) > op.abs(mixed_mMuMu-mZ)))

        mH_cats = []
        for catNm, (has4l, bestZ, otherZ) in {
                "4Mu" : reco_4l(muons    , "Mu", noSel),
                "4El" : reco_4l(electrons, "El", noSel),
                "2El2Mu" : (has2El2Mu, electrons, muons),
                "2Mu2El" : (has2Mu2El, muons, electrons)
                }.items():
            bestZp4  = bestZ[0].p4  + bestZ[1].p4
            otherZp4 = otherZ[0].p4 + otherZ[1].p4
            hasZZ = has4l.refine(f"{has4l.name}ZZ", cut=[
                op.deltaR(bestZ[0].p4 , bestZ[1].p4 ) > 0.02,
                op.deltaR(otherZ[0].p4, otherZ[1].p4) > 0.02,
                op.in_range(40., bestZp4.M(), 120.),
                op.in_range(12., otherZp4.M(), 120.)
                ])
            plots += self.controlPlots_4l(hasZZ, bestZ, otherZ)
            m4l = (bestZ[0].p4+bestZ[1].p4+otherZ[0].p4+otherZ[1].p4).M()
            hasZZ_m4l70 = hasZZ.refine(f"{hasZZ.name}m4l70", cut=(m4l > 70.))
            p_mH = Plot.make1D(f"H_mass_{catNm}", m4l, hasZZ_m4l70, EqBin(36, 70., 180.),
                    plotopts={"show-overflow": False, "log-y": False, "y-axis-range": [0., 18.]})
            mH_cats.append(p_mH)
            plots.append(p_mH)
        plots.append(SummedPlot("H_mass", mH_cats))

        return plots