Exemplo n.º 1
0
def test_with_gauss_qtilde(n, min_x):

    sigma_x = 0.032

    minimizer = Minuit()
    bounds = (-10, 10)
    obs = zfit.Space("x", limits=bounds)

    mean = zfit.Parameter("mean", n * sigma_x)
    sigma = zfit.Parameter("sigma", 1.0)
    model = zfit.pdf.Gauss(obs=obs, mu=mean, sigma=sigma)

    data = model.sample(n=1000)

    nll = UnbinnedNLL(model=model, data=data)

    minimum = minimizer.minimize(loss=nll)
    minimum.hesse()

    x = minimum.params[mean]["value"]
    x_err = minimum.params[mean]["minuit_hesse"]["error"]

    x_min = x - x_err * 3
    x_max = x + x_err * 3

    x_min = max([x_min, min_x])

    poinull = POIarray(mean, np.linspace(x_min, x_max, 50))
    calculator = AsymptoticCalculator(nll, minimizer)

    ci = ConfidenceInterval(calculator, poinull, qtilde=True)
    ci.interval(alpha=0.05, printlevel=1)
Exemplo n.º 2
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def test_with_gauss_fluctuations():

    x_true = -2.0

    minimizer = Minuit()
    bounds = (-10, 10)
    obs = zfit.Space("x", limits=bounds)

    mean = zfit.Parameter("mean", 0)
    sigma = zfit.Parameter("sigma", 1.0)
    model = zfit.pdf.Gauss(obs=obs, mu=mean, sigma=sigma)

    npzfile = f"{notebooks_dir}/toys/FC_toys_{x_true}.npz"
    data = zfit.data.Data.from_numpy(obs=obs, array=np.load(npzfile)["x"])

    nll = UnbinnedNLL(model=model, data=data)

    minimum = minimizer.minimize(loss=nll)
    minimum.hesse()

    toys_fname = f"{notebooks_dir}/toys/FC_toys_{x_true}.yml"
    calculator = FrequentistCalculator.from_yaml(toys_fname, minimum,
                                                 minimizer)
    keys = np.unique([k[0].value for k in calculator.keys()])
    keys.sort()
    poinull = POIarray(mean, keys)

    ci = ConfidenceInterval(calculator, poinull, qtilde=False)
    with pytest.warns(UserWarning):
        ci.interval(alpha=0.05, printlevel=0)

    ci = ConfidenceInterval(calculator, poinull, qtilde=True)
    ci.interval(alpha=0.05, printlevel=0)
Exemplo n.º 3
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def test_unbinned_simultaneous_nll():
    test_values = tf.constant(test_values_np)
    test_values = zfit.Data.from_tensor(obs=obs1, tensor=test_values)
    test_values2 = tf.constant(test_values_np2)
    test_values2 = zfit.Data.from_tensor(obs=obs1, tensor=test_values2)
    gaussian1, mu1, sigma1 = create_gauss1()
    gaussian2, mu2, sigma2 = create_gauss2()
    gaussian2 = gaussian2.create_extended(zfit.Parameter('yield_gauss2', 5))
    nll = zfit.loss.UnbinnedNLL(
        model=[gaussian1, gaussian2],
        data=[test_values, test_values2],
    )
    minimizer = Minuit(tolerance=1e-5)
    status = minimizer.minimize(loss=nll, params=[mu1, sigma1, mu2, sigma2])
    params = status.params
    assert set(nll.get_params()) == {mu1, mu2, sigma1, sigma2}

    assert params[mu1]['value'] == pytest.approx(np.mean(test_values_np),
                                                 rel=0.007)
    assert params[mu2]['value'] == pytest.approx(np.mean(test_values_np2),
                                                 rel=0.007)
    assert params[sigma1]['value'] == pytest.approx(np.std(test_values_np),
                                                    rel=0.007)
    assert params[sigma2]['value'] == pytest.approx(np.std(test_values_np2),
                                                    rel=0.007)
Exemplo n.º 4
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def test_extended_unbinned_nll():
    test_values = z.constant(test_values_np)
    test_values = zfit.Data.from_tensor(obs=obs1, tensor=test_values)
    gaussian3, mu3, sigma3, yield3 = create_gauss3ext()
    nll = zfit.loss.ExtendedUnbinnedNLL(model=gaussian3,
                                        data=test_values,
                                        fit_range=(-20, 20))
    assert {mu3, sigma3, yield3} == nll.get_params()
    minimizer = Minuit()
    status = minimizer.minimize(loss=nll)
    params = status.params
    assert params[mu3]['value'] == pytest.approx(np.mean(test_values_np), rel=0.007)
    assert params[sigma3]['value'] == pytest.approx(np.std(test_values_np), rel=0.007)
    assert params[yield3]['value'] == pytest.approx(yield_true, rel=0.007)
Exemplo n.º 5
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def test_unbinned_simultaneous_nll():
    mu1, mu2, nll, sigma1, sigma2 = create_simultaneous_loss()
    minimizer = Minuit(tol=1e-5)
    status = minimizer.minimize(loss=nll, params=[mu1, sigma1, mu2, sigma2])
    params = status.params
    assert set(nll.get_params()) == {mu1, mu2, sigma1, sigma2}

    assert params[mu1]["value"] == pytest.approx(np.mean(test_values_np),
                                                 rel=0.007)
    assert params[mu2]["value"] == pytest.approx(np.mean(test_values_np2),
                                                 rel=0.007)
    assert params[sigma1]["value"] == pytest.approx(np.std(test_values_np),
                                                    rel=0.007)
    assert params[sigma2]["value"] == pytest.approx(np.std(test_values_np2),
                                                    rel=0.007)
Exemplo n.º 6
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def test_sweights():

    minimizer = Minuit()
    mass, p, loss, Nsig, Nbkg, sig_p, bkg_p = get_data_and_loss()

    with pytest.raises(ModelNotFittedToData):
        compute_sweights(loss.model[0], mass)

    minimizer.minimize(loss)

    model = loss.model[0]
    assert is_sum_of_extended_pdfs(model)

    yields = [Nsig, Nbkg]

    sweights = compute_sweights(loss.model[0], mass)

    assert np.allclose(
        [np.sum(sweights[y]) / get_value(y.value()) for y in yields], 1.0)

    nbins = 30
    hist_conf = dict(bins=nbins, range=[0, 10])

    hist_sig_true_p, _ = np.histogram(sig_p, **hist_conf)
    sel = hist_sig_true_p != 0
    hist_sig_true_p = hist_sig_true_p[sel]
    hist_sig_sweights_p = np.histogram(p, weights=sweights[Nsig],
                                       **hist_conf)[0][sel]

    assert chisquare(hist_sig_sweights_p, hist_sig_true_p)[-1] < 0.01

    hist_bkg_true_p, _ = np.histogram(bkg_p, **hist_conf)
    sel = hist_bkg_true_p != 0
    hist_bkg_true_p = hist_bkg_true_p[sel]
    hist_bkg_sweights_p = np.histogram(p, weights=sweights[Nbkg],
                                       **hist_conf)[0][sel]

    assert chisquare(hist_bkg_sweights_p, hist_bkg_true_p)[-1] < 0.01

    with pytest.warns(AboveToleranceWarning):
        compute_sweights(
            loss.model[0],
            np.concatenate([mass, np.random.normal(0.8, 0.1, 100)]))

    with pytest.raises(ModelNotFittedToData):
        compute_sweights(
            loss.model[0],
            np.concatenate([mass, np.random.normal(0.8, 0.1, 1000)]))
Exemplo n.º 7
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def test_with_asymptotic_calculator():

    loss, (Nsig, Nbkg) = create_loss()
    calculator = AsymptoticCalculator(loss, Minuit())

    poinull = POI(Nsig, np.linspace(0.0, 25, 20))
    poialt = POI(Nsig, 0)

    ul = UpperLimit(calculator, [poinull], [poialt])
    ul_qtilde = UpperLimit(calculator, [poinull], [poialt], qtilde=True)
    limits = ul.upperlimit(alpha=0.05, CLs=True)

    # np.savez("cls_pvalues.npz", poivalues=poinull.value, **ul.pvalues(True))
    # np.savez("clsb_pvalues.npz", poivalues=poinull.value, **ul.pvalues(False))

    assert limits["observed"] == pytest.approx(15.725784747406346, rel=0.1)
    assert limits["expected"] == pytest.approx(11.927442041887158, rel=0.1)
    assert limits["expected_p1"] == pytest.approx(16.596396280677116, rel=0.1)
    assert limits["expected_p2"] == pytest.approx(22.24864429383046, rel=0.1)
    assert limits["expected_m1"] == pytest.approx(8.592750403611896, rel=0.1)
    assert limits["expected_m2"] == pytest.approx(6.400549971360598, rel=0.1)

    ul.upperlimit(alpha=0.05, CLs=False)
    ul_qtilde.upperlimit(alpha=0.05, CLs=True)

    # test error when scan range is too small

    with pytest.raises(POIRangeError):
        poinull = POI(Nsig, np.linspace(0.0, 12, 20))
        ul = UpperLimit(calculator, [poinull], [poialt])
        ul.upperlimit(alpha=0.05, CLs=True)
Exemplo n.º 8
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def test_constructor():
    with pytest.raises(TypeError):
        BaseTest()

    loss, (mean, sigma) = create_loss()
    calculator = BaseCalculator(loss, Minuit())

    poimean_1 = POI(mean, [1.0, 1.1, 1.2, 1.3])
    poimean_2 = POI(mean, [1.2])

    poisigma_1 = POI(sigma, [0.06, 0.08, 0.01, 0.012, 0.014])
    poisigma_2 = POI(sigma, [0.1])

    with pytest.raises(TypeError):
        BaseTest(calculator)

    with pytest.raises(ValueError):
        BaseTest(calculator, poimean_1)

    with pytest.raises(ValueError):
        BaseTest(calculator, [poimean_1], poimean_2)

    with pytest.raises(ValueError):
        BaseTest(calculator, [poimean_1], [poisigma_2])

    with pytest.raises(ValueError):
        BaseTest(calculator, [poisigma_1], [poimean_2])
Exemplo n.º 9
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def test_with_asymptotic_calculator():

    loss, mean = create_loss()
    calculator = AsymptoticCalculator(loss, Minuit())

    poinull = POI(mean, np.linspace(1.15, 1.26, 100))
    ci = ConfidenceInterval(calculator, [poinull])
    interval = ci.interval()

    assert interval["lower"] == pytest.approx(1.1810371356602791, rel=0.1)
    assert interval["upper"] == pytest.approx(1.2156701172321935, rel=0.1)

    with pytest.raises(POIRangeError):
        poinull = POI(mean, np.linspace(1.2, 1.205, 50))
        ci = ConfidenceInterval(calculator, [poinull])
        ci.interval()

    with pytest.raises(POIRangeError):
        poinull = POI(mean, np.linspace(1.2, 1.26, 50))
        ci = ConfidenceInterval(calculator, [poinull])
        ci.interval()

    with pytest.raises(POIRangeError):
        poinull = POI(mean, np.linspace(1.17, 1.205, 50))
        ci = ConfidenceInterval(calculator, [poinull])
        ci.interval()
Exemplo n.º 10
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def test_extended_unbinned_nll(size):
    if size is None:
        test_values = z.constant(test_values_np)
        size = test_values.shape[0]
    else:
        test_values = create_test_values(size)
    test_values = zfit.Data.from_tensor(obs=obs1, tensor=test_values)
    gaussian3, mu3, sigma3, yield3 = create_gauss3ext()
    nll = zfit.loss.ExtendedUnbinnedNLL(model=gaussian3,
                                        data=test_values,
                                        fit_range=(-20, 20))
    assert {mu3, sigma3, yield3} == nll.get_params()
    minimizer = Minuit(tol=1e-4)
    status = minimizer.minimize(loss=nll)
    params = status.params
    assert params[mu3]['value'] == pytest.approx(zfit.run(tf.math.reduce_mean(test_values)), rel=0.05)
    assert params[sigma3]['value'] == pytest.approx(zfit.run(tf.math.reduce_std(test_values)), rel=0.05)
    assert params[yield3]['value'] == pytest.approx(size, rel=0.005)
Exemplo n.º 11
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def test_constructors():
    loss, (Nsig, poigen, poieval) = create_loss()
    ToyResult(poigen, poieval)

    with pytest.raises(TypeError):
        ToyResult(poigen, "poieval")
    with pytest.raises(TypeError):
        ToyResult(poieval, poieval)

    ToysManager(loss, Minuit())
Exemplo n.º 12
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def test_toymanager_attributes():

    loss, (Nsig, poigen, poieval) = create_loss()

    tm = ToysManager.from_yaml(
        f"{notebooks_dir}/toys/discovery_freq_zfit_toys.yml", loss, Minuit()
    )

    with pytest.raises(ParameterNotFound):
        ToysManager.from_yaml(
            f"{notebooks_dir}/toys/discovery_freq_zfit_toys.yml",
            create_loss_1(),
            Minuit(),
        )

    tr = list(tm.values())[0]
    assert isinstance(tr, ToyResult)
    assert list(tm.keys())[0] == (poigen, poigen)
    assert (poigen, poieval) in tm.keys()

    assert tm.get_toyresult(poigen, poieval) == tr
    tr1 = ToyResult(poigen, poieval.append(1))
    tm.add_toyresult(tr1)
    with pytest.raises(TypeError):
        tm.add_toyresult("tr1")
    assert (tr1.poigen, tr1.poieval) in tm.keys()

    tm.to_yaml(f"{pwd}/test_toyutils.yml")
    tm.to_yaml(f"{pwd}/test_toyutils.yml")
    tmc = ToysManager.from_yaml(f"{pwd}/test_toyutils.yml", loss, Minuit())
    assert (
        tm.get_toyresult(poigen, poieval).ntoys
        == tmc.get_toyresult(poigen, poieval).ntoys
    )

    samplers = tm.sampler(floating_params=[poigen.parameter])
    assert all(is_valid_data(s) for s in samplers)
    loss = tm.toys_loss(poigen.name)
    assert is_valid_loss(loss)

    os.remove(f"{pwd}/test_toyutils.yml")
Exemplo n.º 13
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def test_base_calculator(calculator):
    with pytest.raises(TypeError):
        calculator()

    loss, (mean, sigma) = create_loss()

    calc_loss = calculator(loss, Minuit())
    bestfit = calc_loss.bestfit
    calc_fitresult = calculator(bestfit, calc_loss.minimizer)

    assert calc_loss.bestfit == calc_fitresult.bestfit
    assert calc_loss.loss == calc_fitresult.loss

    mean_poi = POI(mean, [1.15, 1.2, 1.25])
    mean_nll = calc_loss.obs_nll(pois=[mean_poi])
    calc_loss.obs_nll(pois=[mean_poi])  # get from cache

    assert mean_nll[0] >= mean_nll[1]
    assert mean_nll[2] >= mean_nll[1]

    assert calc_loss.obs_nll([mean_poi[0]]) == mean_nll[0]
    assert calc_loss.obs_nll([mean_poi[1]]) == mean_nll[1]
    assert calc_loss.obs_nll([mean_poi[2]]) == mean_nll[2]

    mean_poialt = POI(mean, 1.2)

    if calculator == BaseCalculator:
        with pytest.raises(NotImplementedError):
            calc_loss.pvalue(poinull=[mean_poi], poialt=[mean_poialt])
        with pytest.raises(NotImplementedError):
            calc_loss.expected_pvalue(poinull=[mean_poi], poialt=[mean_poialt], nsigma=np.arange(-2, 3, 1))
        with pytest.raises(NotImplementedError):
            calc_loss.expected_poi(poinull=[mean_poi], poialt=[mean_poialt], nsigma=np.arange(-2, 3, 1))
    else:
        calc_loss.pvalue(poinull=[mean_poi], poialt=[mean_poialt])
        calc_loss.expected_pvalue(poinull=[mean_poi], poialt=[mean_poialt], nsigma=np.arange(-2, 3, 1))
        calc_loss.expected_poi(poinull=[mean_poi], poialt=[mean_poialt], nsigma=np.arange(-2, 3, 1))

    model = calc_loss.model[0]
    sampler = model.create_sampler(n=10000)
    assert is_valid_data(sampler)

    loss = calc_loss.lossbuilder(model=[model], data=[sampler], weights=None)
    assert is_valid_loss(loss)

    with pytest.raises(ValueError):
        calc_loss.lossbuilder(model=[model, model], data=[sampler])
    with pytest.raises(ValueError):
        calc_loss.lossbuilder(model=[model], data=[sampler, calc_loss.data[0]])
    with pytest.raises(ValueError):
        calc_loss.lossbuilder(model=[model], data=[sampler], weights=[])
    with pytest.raises(ValueError):
        calc_loss.lossbuilder(model=[model], data=[sampler], weights=[np.ones(10000), np.ones(10000)])
Exemplo n.º 14
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def test_unbinned_nll(weights, sigma, options):
    gaussian1, mu1, sigma1 = create_gauss1()
    gaussian2, mu2, sigma2 = create_gauss2()

    test_values = tf.constant(test_values_np)
    test_values = zfit.Data.from_tensor(obs=obs1, tensor=test_values, weights=weights)
    nll_object = zfit.loss.UnbinnedNLL(model=gaussian1, data=test_values, options=options)
    minimizer = Minuit(tol=1e-5)
    status = minimizer.minimize(loss=nll_object, params=[mu1, sigma1])
    params = status.params
    rel_error = 0.12 if weights is None else 0.1  # more fluctuating with weights

    assert params[mu1]['value'] == pytest.approx(np.mean(test_values_np), rel=rel_error)
    assert params[sigma1]['value'] == pytest.approx(np.std(test_values_np), rel=rel_error)

    constraints = zfit.constraint.nll_gaussian(params=[mu2, sigma2],
                                               observation=[mu_constr[0], sigma_constr[0]],
                                               uncertainty=sigma())
    nll_object = UnbinnedNLL(model=gaussian2, data=test_values,
                             constraints=constraints, options=options)

    minimizer = Minuit(tol=1e-4)
    status = minimizer.minimize(loss=nll_object, params=[mu2, sigma2])
    params = status.params
    if weights is None:
        assert params[mu2]['value'] > np.average(test_values_np, weights=weights)
        assert params[sigma2]['value'] < np.std(test_values_np)
Exemplo n.º 15
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def test_with_asymptotic_calculator():

    loss, (Nsig, Nbkg) = create_loss()
    calculator = AsymptoticCalculator(loss, Minuit())

    poinull = POI(Nsig, 0)

    discovery_test = Discovery(calculator, [poinull])
    pnull, significance = discovery_test.result()

    assert pnull == pytest.approx(0.0007571045089567185, abs=0.05)
    assert significance == pytest.approx(3.1719464953752565, abs=0.05)
    assert significance >= 3
Exemplo n.º 16
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def test_attributes():

    loss, (mean, sigma) = create_loss()
    calculator = BaseCalculator(loss, Minuit())

    poimean_1 = POI(mean, [1.0, 1.1, 1.2, 1.3])
    poimean_2 = POI(mean, [1.2])

    test = BaseTest(calculator, [poimean_1], [poimean_2])

    assert test.poinull == [poimean_1]
    assert test.poialt == [poimean_2]
    assert test.calculator == calculator
Exemplo n.º 17
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def test_attributes():

    loss, (mean, sigma) = create_loss()
    calculator = BaseCalculator(loss, Minuit())

    poimean_1 = POIarray(mean, [1.0, 1.1, 1.2, 1.3])
    poimean_2 = POI(mean, 1.2)

    test = BaseTest(calculator, poimean_1, poimean_2)

    assert test.poinull == poimean_1
    assert test.poialt == poimean_2
    assert test.calculator == calculator
Exemplo n.º 18
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def test_frequentist_calculator_one_poi(constraint):
    with pytest.raises(TypeError):
        FrequentistCalculator()

    loss, (mean, sigma) = create_loss(constraint=constraint)
    calc = FrequentistCalculator(loss, Minuit(), ntoysnull=100, ntoysalt=100)

    assert calc.ntoysnull == 100
    assert calc.ntoysalt == 100

    samplers = calc.sampler(floating_params=[mean])
    assert all(is_valid_data(s) for s in samplers)
    loss = calc.toys_loss(mean.name)
    assert is_valid_loss(loss)
Exemplo n.º 19
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def test_counting_with_asymptotic_calculator():

    (
        loss,
        Nsig,
    ) = create_loss_counting()
    calculator = AsymptoticCalculator(loss, Minuit())

    poinull = POI(Nsig, 0)

    discovery_test = Discovery(calculator, poinull)
    pnull, significance = discovery_test.result()

    assert significance < 2
Exemplo n.º 20
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def test_counting_with_frequentist_calculator():

    (
        loss,
        Nsig,
    ) = create_loss_counting()
    calculator = FrequentistCalculator(loss, Minuit(), ntoysnull=1000)

    poinull = POI(Nsig, 0)

    discovery_test = Discovery(calculator, poinull)
    pnull, significance = discovery_test.result()

    assert significance < 2
Exemplo n.º 21
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def test_with_frequentist_calculator():

    loss, (Nsig, Nbkg) = create_loss()
    calculator = FrequentistCalculator.from_yaml(
        f"{notebooks_dir}/toys/discovery_freq_zfit_toys.yml", loss, Minuit())

    poinull = POI(Nsig, 0)

    discovery_test = Discovery(calculator, poinull)
    pnull, significance = discovery_test.result()

    assert pnull == pytest.approx(0.0004, rel=0.05, abs=0.0005)
    assert significance == pytest.approx(3.3527947805048592, rel=0.05, abs=0.1)
    assert significance >= 3
Exemplo n.º 22
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def test_asymptotic_calculator_two_pois():

    loss, (mean, sigma) = create_loss()
    calc = AsymptoticCalculator(loss, Minuit())

    poi_null = [POI(mean, [1.15, 1.2, 1.25]), POI(sigma, [0.05, 0.1])]
    poi_alt = [POI(mean, 1.2), POI(sigma, 0.1)]

    with pytest.raises(NotImplementedError):
        calc.check_pois(poi_null)
    with pytest.raises(NotImplementedError):
        calc.pvalue(poi_null, poi_alt)
    with pytest.raises(NotImplementedError):
        calc.expected_pvalue(poinull=poi_null, poialt=poi_alt, nsigma=np.arange(-2, 3, 1))
    with pytest.raises(NotImplementedError):
        calc.expected_poi(poinull=poi_null, poialt=poi_alt, nsigma=np.arange(-2, 3, 1))
Exemplo n.º 23
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def test_constructor():
    with pytest.raises(TypeError):
        UpperLimit()

    loss, (Nsig, Nbkg) = create_loss()
    calculator = BaseCalculator(loss, Minuit())

    poi_1 = POI(Nsig, 0.0)
    poi_2 = POI(Nsig, 2.0)

    with pytest.raises(TypeError):
        UpperLimit(calculator)

    with pytest.raises(TypeError):
        UpperLimit(calculator, poi_1)

    with pytest.raises(TypeError):
        UpperLimit(calculator, [poi_1], poi_2)
Exemplo n.º 24
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def test_constructor():
    with pytest.raises(TypeError):
        BaseTest()

    loss, (mean, sigma) = create_loss()
    calculator = BaseCalculator(loss, Minuit())

    poimean = POIarray(mean, [1.0, 1.1, 1.2, 1.3])
    poisigma = POI(sigma, 0.1)

    with pytest.raises(TypeError):
        BaseTest(calculator)

    with pytest.raises(TypeError):
        BaseTest(calculator, poimean, [poisigma])

    with pytest.raises(TypeError):
        BaseTest("calculator", poimean, poisigma)
Exemplo n.º 25
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def test_constructor():
    with pytest.raises(TypeError):
        ConfidenceInterval()

    loss, mean = create_loss()
    calculator = BaseCalculator(loss, Minuit())

    poi_1 = POI(mean, 1.5)
    poi_2 = POI(mean, 1.2)

    with pytest.raises(TypeError):
        ConfidenceInterval(calculator)

    with pytest.raises(TypeError):
        ConfidenceInterval(calculator, [poi_1], poi_2, qtilde=True)

    with pytest.raises(TypeError):
        ConfidenceInterval(calculator, [poi_1], [poi_2], qtilde=False)
Exemplo n.º 26
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def test_asymptotic_calculator_one_poi():
    with pytest.raises(TypeError):
        AsymptoticCalculator()

    loss, (mean, sigma) = create_loss()
    calc = AsymptoticCalculator(loss, Minuit())

    poi_null = POIarray(mean, [1.15, 1.2, 1.25])
    poi_alt = POI(mean, 1.2)

    dataset = calc.asimov_dataset(poi_alt)
    assert all(is_valid_data(d) for d in dataset)
    loss = calc.asimov_loss(poi_alt)
    assert is_valid_loss(loss)

    null_nll = calc.asimov_nll(pois=poi_null, poialt=poi_alt)

    assert null_nll[0] >= null_nll[1]
    assert null_nll[2] >= null_nll[1]
Exemplo n.º 27
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def test_constructor():
    with pytest.raises(TypeError):
        Discovery()

    loss, (Nsig, Nbkg) = create_loss()
    calculator = BaseCalculator(loss, Minuit())

    poi_1 = POI(Nsig, [0.0])
    poi_2 = POI(Nsig, [2.0])

    with pytest.raises(TypeError):
        Discovery(calculator)

    with pytest.raises(ValueError):
        Discovery(calculator, poi_1)

    with pytest.raises(TypeError):
        Discovery(calculator, [poi_1], poi_2)

    with pytest.raises(TypeError):
        Discovery(calculator, [poi_1], [poi_2])
Exemplo n.º 28
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def test_binned_nll(weights):
    obs = zfit.Space("obs1", limits=(-15, 25))
    gaussian1, mu1, sigma1 = create_gauss1(obs=obs)
    gaussian2, mu2, sigma2 = create_gauss2(obs=obs)
    test_values_np = np.random.normal(loc=mu_true, scale=4, size=(10000, 1))

    test_values = tf.constant(test_values_np)
    test_values = zfit.Data.from_tensor(obs=obs,
                                        tensor=test_values,
                                        weights=weights)
    test_values_binned = test_values.create_hist(
        converter=zfit.hist.histogramdd, bin_kwargs={"bins": 100})
    nll_object = zfit.loss.BinnedNLL(model=gaussian1, data=test_values_binned)
    minimizer = Minuit()
    status = minimizer.minimize(loss=nll_object, params=[mu1, sigma1])
    params = status.params
    rel_error = 0.035 if weights is None else 0.15  # more fluctuating with weights

    assert params[mu1]["value"] == pytest.approx(np.mean(test_values_np),
                                                 rel=rel_error)
    assert params[sigma1]["value"] == pytest.approx(np.std(test_values_np),
                                                    rel=rel_error)

    constraints = zfit.constraint.nll_gaussian(
        params=[mu2, sigma2],
        mu=[mu_constr[0], sigma_constr[0]],
        sigma=[mu_constr[1], sigma_constr[1]],
    )
    nll_object = zfit.loss.BinnedNLL(
        model=gaussian2,
        data=test_values_binned,
        fit_range=(-np.infty, np.infty),
        constraints=constraints,
    )

    minimizer = Minuit()
    status = minimizer.minimize(loss=nll_object, params=[mu2, sigma2])
    params = status.params
    if weights is None:
        assert params[mu2]["value"] > np.mean(test_values_np)
        assert params[sigma2]["value"] < np.std(test_values_np)
Exemplo n.º 29
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def test_base_calculator(calculator):
    with pytest.raises(TypeError):
        calculator()

    loss, (mean, sigma) = create_loss()

    with pytest.raises(ValueError):
        calculator("loss", Minuit())

    with pytest.raises(ValueError):
        calculator(loss, "Minuit()")

    calc_loss = calculator(loss, Minuit())

    with pytest.raises(ValueError):
        calc_loss.bestfit = "bestfit"

    bestfit = calc_loss.bestfit
    calc_fitresult = calculator(bestfit, calc_loss.minimizer)

    assert calc_loss.bestfit == calc_fitresult.bestfit
    assert calc_loss.loss == calc_fitresult.loss

    mean_poi = POIarray(mean, [1.15, 1.2, 1.25])
    mean_nll = calc_loss.obs_nll(pois=mean_poi)
    calc_loss.obs_nll(pois=mean_poi)  # get from cache

    assert mean_nll[0] >= mean_nll[1]
    assert mean_nll[2] >= mean_nll[1]

    assert calc_loss.obs_nll(mean_poi[0]) == mean_nll[0]
    assert calc_loss.obs_nll(mean_poi[1]) == mean_nll[1]
    assert calc_loss.obs_nll(mean_poi[2]) == mean_nll[2]

    mean_poialt = POI(mean, 1.2)

    pvalue = lambda: calc_loss.pvalue(poinull=mean_poi, poialt=mean_poialt)
    exp_pvalue = lambda: calc_loss.expected_pvalue(
        poinull=mean_poi, poialt=mean_poialt, nsigma=np.arange(-2, 3, 1)
    )
    exp_poi = lambda: calc_loss.expected_poi(
        poinull=mean_poi, poialt=mean_poialt, nsigma=np.arange(-2, 3, 1)
    )

    if calculator == BaseCalculator:
        with pytest.raises(NotImplementedError):
            pvalue()
        with pytest.raises(NotImplementedError):
            exp_pvalue()
    else:
        pvalue()
        exp_pvalue()

    model = calc_loss.model[0]
    sampler = model.create_sampler(n=10000)
    assert is_valid_data(sampler)

    loss = calc_loss.lossbuilder(model=[model], data=[sampler], weights=None)
    assert is_valid_loss(loss)

    with pytest.raises(ValueError):
        calc_loss.lossbuilder(model=[model, model], data=[sampler])
    with pytest.raises(ValueError):
        calc_loss.lossbuilder(model=[model], data=[sampler, calc_loss.data[0]])
    with pytest.raises(ValueError):
        calc_loss.lossbuilder(model=[model], data=[sampler], weights=[])
    with pytest.raises(ValueError):
        calc_loss.lossbuilder(
            model=[model], data=[sampler], weights=[np.ones(10000), np.ones(10000)]
        )

    assert calc_loss.get_parameter(mean_poi.name) == mean
    with pytest.raises(KeyError):
        calc_loss.get_parameter("dummy_parameter")
Exemplo n.º 30
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def freq_calc():
    loss, mean = create_loss()
    calculator = FrequentistCalculator.from_yaml(
        f"{notebooks_dir}/toys/ci_freq_zfit_toys.yml", loss, Minuit())
    return mean, calculator