def train_test(inputCfg, PtBin, OutPutDirPt, TrainTestData, iBin):  #pylint: disable=too-many-statements, too-many-branches
    '''
    function for model training and testing
    '''
    n_classes = len(np.unique(TrainTestData[3]))
    modelClf = xgb.XGBClassifier(use_label_encoder=False)
    TrainCols = inputCfg['ml']['training_columns']
    HyperPars = inputCfg['ml']['hyper_par'][iBin]
    if not isinstance(TrainCols, list):
        print('\033[91mERROR: training columns must be defined!\033[0m')
        sys.exit()
    if not isinstance(HyperPars, dict):
        print(
            '\033[91mERROR: hyper-parameters must be defined or be an empty dict!\033[0m'
        )
        sys.exit()
    ModelHandl = ModelHandler(modelClf, TrainCols, HyperPars)

    # hyperparams optimization
    if inputCfg['ml']['hyper_par_opt']['do_hyp_opt']:
        print('Perform bayesian optimization')

        BayesOptConfig = inputCfg['ml']['hyper_par_opt']['bayes_opt_config']
        if not isinstance(BayesOptConfig, dict):
            print('\033[91mERROR: bayes_opt_config must be defined!\033[0m')
            sys.exit()

        if n_classes > 2:
            average_method = inputCfg['ml']['roc_auc_average']
            roc_method = inputCfg['ml']['roc_auc_approach']
            if not (average_method in ['macro', 'weighted']
                    and roc_method in ['ovo', 'ovr']):
                print(
                    '\033[91mERROR: selected ROC configuration is not valid!\033[0m'
                )
                sys.exit()

            if average_method == 'weighted':
                metric = f'roc_auc_{roc_method}_{average_method}'
            else:
                metric = f'roc_auc_{roc_method}'
        else:
            metric = 'roc_auc'

        print('Performing hyper-parameters optimisation: ...', end='\r')
        OutFileHypPars = open(
            f'{OutPutDirPt}/HyperParOpt_pT_{PtBin[0]}_{PtBin[1]}.txt', 'wt')
        sys.stdout = OutFileHypPars
        ModelHandl.optimize_params_bayes(
            TrainTestData,
            BayesOptConfig,
            metric,
            nfold=inputCfg['ml']['hyper_par_opt']['nfolds'],
            init_points=inputCfg['ml']['hyper_par_opt']['initpoints'],
            n_iter=inputCfg['ml']['hyper_par_opt']['niter'],
            njobs=inputCfg['ml']['hyper_par_opt']['njobs'])
        OutFileHypPars.close()
        sys.stdout = sys.__stdout__
        print('Performing hyper-parameters optimisation: Done!')
        print(
            f'Output saved in {OutPutDirPt}/HyperParOpt_pT_{PtBin[0]}_{PtBin[1]}.txt'
        )
        print(f'Best hyper-parameters:\n{ModelHandl.get_model_params()}')
    else:
        ModelHandl.set_model_params(HyperPars)

    # train and test the model with the updated hyper-parameters
    yPredTest = ModelHandl.train_test_model(
        TrainTestData,
        True,
        output_margin=inputCfg['ml']['raw_output'],
        average=inputCfg['ml']['roc_auc_average'],
        multi_class_opt=inputCfg['ml']['roc_auc_approach'])
    yPredTrain = ModelHandl.predict(TrainTestData[0],
                                    inputCfg['ml']['raw_output'])

    # save model handler in pickle
    ModelHandl.dump_model_handler(
        f'{OutPutDirPt}/ModelHandler_pT_{PtBin[0]}_{PtBin[1]}.pickle')
    ModelHandl.dump_original_model(
        f'{OutPutDirPt}/XGBoostModel_pT_{PtBin[0]}_{PtBin[1]}.model', True)

    #plots
    LegLabels = [
        inputCfg['output']['leg_labels']['Bkg'],
        inputCfg['output']['leg_labels']['Prompt']
    ]
    if inputCfg['output']['leg_labels']['FD'] is not None:
        LegLabels.append(inputCfg['output']['leg_labels']['FD'])
    OutputLabels = [
        inputCfg['output']['out_labels']['Bkg'],
        inputCfg['output']['out_labels']['Prompt']
    ]
    if inputCfg['output']['out_labels']['FD'] is not None:
        OutputLabels.append(inputCfg['output']['out_labels']['FD'])
    #_____________________________________________
    plt.rcParams["figure.figsize"] = (10, 7)
    MLOutputFig = plot_utils.plot_output_train_test(
        ModelHandl,
        TrainTestData,
        80,
        inputCfg['ml']['raw_output'],
        LegLabels,
        inputCfg['plots']['train_test_log'],
        density=True)
    if n_classes > 2:
        for Fig, Lab in zip(MLOutputFig, OutputLabels):
            Fig.savefig(
                f'{OutPutDirPt}/MLOutputDistr{Lab}_pT_{PtBin[0]}_{PtBin[1]}.pdf'
            )
    else:
        MLOutputFig.savefig(
            f'{OutPutDirPt}/MLOutputDistr_pT_{PtBin[0]}_{PtBin[1]}.pdf')
    #_____________________________________________
    plt.rcParams["figure.figsize"] = (10, 9)
    ROCCurveFig = plot_utils.plot_roc(TrainTestData[3], yPredTest, None,
                                      LegLabels,
                                      inputCfg['ml']['roc_auc_average'],
                                      inputCfg['ml']['roc_auc_approach'])
    ROCCurveFig.savefig(
        f'{OutPutDirPt}/ROCCurveAll_pT_{PtBin[0]}_{PtBin[1]}.pdf')
    pickle.dump(
        ROCCurveFig,
        open(f'{OutPutDirPt}/ROCCurveAll_pT_{PtBin[0]}_{PtBin[1]}.pkl', 'wb'))
    #_____________________________________________
    plt.rcParams["figure.figsize"] = (10, 9)
    ROCCurveTTFig = plot_utils.plot_roc_train_test(
        TrainTestData[3], yPredTest, TrainTestData[1], yPredTrain, None,
        LegLabels, inputCfg['ml']['roc_auc_average'],
        inputCfg['ml']['roc_auc_approach'])
    ROCCurveTTFig.savefig(
        f'{OutPutDirPt}/ROCCurveTrainTest_pT_{PtBin[0]}_{PtBin[1]}.pdf')
    #_____________________________________________
    PrecisionRecallFig = plot_utils.plot_precision_recall(
        TrainTestData[3], yPredTest, LegLabels)
    PrecisionRecallFig.savefig(
        f'{OutPutDirPt}/PrecisionRecallAll_pT_{PtBin[0]}_{PtBin[1]}.pdf')
    #_____________________________________________
    plt.rcParams["figure.figsize"] = (12, 7)
    FeaturesImportanceFig = plot_utils.plot_feature_imp(
        TrainTestData[2][TrainCols], TrainTestData[3], ModelHandl, LegLabels)
    n_plot = n_classes if n_classes > 2 else 1
    for iFig, Fig in enumerate(FeaturesImportanceFig):
        if iFig < n_plot:
            label = OutputLabels[iFig] if n_classes > 2 else ''
            Fig.savefig(
                f'{OutPutDirPt}/FeatureImportance{label}_pT_{PtBin[0]}_{PtBin[1]}.pdf'
            )
        else:
            Fig.savefig(
                f'{OutPutDirPt}/FeatureImportanceAll_pT_{PtBin[0]}_{PtBin[1]}.pdf'
            )

    return ModelHandl
Esempio n. 2
0
def test_plot_roc():
    """
    Test the roc curve plot
    """
    assert isinstance(plot_utils.plot_roc(DATA[3], Y_PRED), matplotlib.figure.Figure)
HYP_RANGES = {
    # # defines the maximum depth of a single tree (regularization)
    'max_depth': (5, 15),
    # 'learning_rate': (0.01, 0.3),  # learning rate
    'n_estimators': (5, 10),  # number of boosting trees
}
MODEL.optimize_params_bayes(DATA, HYP_RANGES, 'roc_auc')

# train and test the model with the updated hyperparameters
MODEL.train_test_model(DATA)
Y_PRED = MODEL.predict(DATA[2])

# Calculate the BDT efficiency as a function of the BDT score
EFFICIENCY, THRESHOLD = analysis_utils.bdt_efficiency_array(
    DATA[3], Y_PRED, n_points=10)
# --------------------------------------------


# PLOTTING
# --------------------------------------------
FEATURES_DISTRIBUTIONS_PLOT = plot_utils.plot_distr(
    [SIG_DF, BKG_DF], SIG_DF.columns)
CORRELATION_MATRIX_PLOT = plot_utils.plot_corr([SIG_DF, BKG_DF], SIG_DF.columns)
BDT_OUTPUT_PLOT = plot_utils.plot_output_train_test(MODEL, DATA)
ROC_CURVE_PLOT = plot_utils.plot_roc(DATA[3], Y_PRED)
PRECISION_RECALL_PLOT = plot_utils.plot_precision_recall(DATA[3], Y_PRED)
BDT_EFFICIENCY_PLOT = plot_utils.plot_bdt_eff(THRESHOLD, EFFICIENCY)
FEATURES_IMPORTANCE = plot_utils.plot_feature_imp(TEST_SET, Y_TEST, MODEL)
plt.show()
# ---------------------------------------------
Esempio n. 4
0
def train_test(inputCfg, PtMin, PtMax, OutPutDirPt, TrainTestData):
    '''
    function for model training and testing
    '''
    modelClf = xgb.XGBClassifier()
    TrainCols = inputCfg['ml']['training_columns']
    HyperPars = inputCfg['ml']['hyper_par']
    if not isinstance(TrainCols, list):
        print('ERROR: training columns must be defined!')
        sys.exit()
    if not isinstance(HyperPars, dict):
        print('ERROR: hyper-parameters must be defined or be an empty dict!')
        sys.exit()
    ModelHandl = ModelHandler(modelClf, TrainCols, HyperPars)

    # hyperparams optimization --> not working with multi-class classification at the moment
    #HypRanges = {
    #    # # defines the maximum depth of a single tree (regularization)
    #    'max_depth': (1, 30),
    #    'learning_rate': (0.01, 0.3),  # learning rate
    #    'n_estimators': (50, 1000)  # number of boosting trees
    #}
    #ModelHandl.optimize_params_bayes(TrainTestData, HypRanges, None)

    # train and test the model with the updated hyperparameters
    ModelHandl.train_test_model(TrainTestData)
    yPredTest = ModelHandl.predict(TrainTestData[2],
                                   inputCfg['ml']['raw_output'], True)

    # save model handler in pickle
    ModelHandl.dump_model_handler(
        f'{OutPutDirPt}/ModelHandler_pT_{PtMin}_{PtMax}.pickle')

    #plots
    LegLabels = inputCfg['output']['leg_labels']
    OutputLabels = inputCfg['output']['out_labels']
    #_____________________________________________
    plt.rcParams["figure.figsize"] = (10, 7)
    MLOutputFig = plot_utils.plot_output_train_test(
        ModelHandl,
        TrainTestData,
        80,
        inputCfg['ml']['raw_output'],
        LegLabels,
        True,
        inputCfg['plots']['train_test_log'],
        density=True)
    for Fig, Lab in zip(MLOutputFig, OutputLabels):
        Fig.savefig(f'{OutPutDirPt}/MLOutputDistr{Lab}_pT_{PtMin}_{PtMax}.pdf')
    #_____________________________________________
    plt.rcParams["figure.figsize"] = (8, 7)
    ROCCurveFig = plot_utils.plot_roc(TrainTestData[3], yPredTest, LegLabels)
    ROCCurveFig.savefig(f'{OutPutDirPt}/ROCCurveAll_pT_{PtMin}_{PtMax}.pdf')
    #_____________________________________________
    PrecisionRecallFig = plot_utils.plot_precision_recall(
        TrainTestData[3], yPredTest, LegLabels)
    PrecisionRecallFig.savefig(
        f'{OutPutDirPt}/PrecisionRecallAll_pT_{PtMin}_{PtMax}.pdf')
    #_____________________________________________
    plt.rcParams["figure.figsize"] = (12, 7)
    FeaturesImportanceFig = plot_utils.plot_feature_imp(
        TrainTestData[2][TrainCols], TrainTestData[3], ModelHandl)
    for iFig, Fig in enumerate(FeaturesImportanceFig):
        if iFig < 3:
            Fig.savefig(
                f'{OutPutDirPt}/FeatureImportance{OutputLabels[iFig]}_pT_{PtMin}_{PtMax}.pdf'
            )
        else:
            Fig.savefig(
                f'{OutPutDirPt}/FeatureImportanceAll_pT_{PtMin}_{PtMax}.pdf')

    return ModelHandl
    def do_hipe4mlplot(self):
        self.logger.info("Plotting hipe4ml model")

        leglabels = ["Background", "Prompt signal"]
        outputlabels = ["Bkg", "SigPrompt"]

        # _____________________________________________
        plot_utils.plot_distr([self.bkghandler, self.signalhandler],
                              self.v_train, 100, leglabels)
        plt.subplots_adjust(left=0.06,
                            bottom=0.06,
                            right=0.99,
                            top=0.96,
                            hspace=0.55,
                            wspace=0.55)
        figname = f'{self.dirmlplot}/DistributionsAll_pT_{self.p_binmin}_{self.p_binmax}.pdf'
        plt.savefig(figname)
        plt.close('all')
        # _____________________________________________
        corrmatrixfig = plot_utils.plot_corr(
            [self.bkghandler, self.signalhandler], self.v_train, leglabels)
        for figg, labb in zip(corrmatrixfig, outputlabels):
            plt.figure(figg.number)
            plt.subplots_adjust(left=0.2, bottom=0.25, right=0.95, top=0.9)
            figname = f'{self.dirmlplot}/CorrMatrix{labb}_pT_{self.p_binmin}_{self.p_binmax}.pdf'
            figg.savefig(figname)
        # _____________________________________________
        plt.rcParams["figure.figsize"] = (10, 7)
        mloutputfig = plot_utils.plot_output_train_test(
            self.p_hipe4ml_model,
            self.traintestdata,
            80,
            self.raw_output_hipe4ml,
            leglabels,
            self.train_test_log_hipe4ml,
            density=True)
        figname = f'{self.dirmlplot}/MLOutputDistr_pT_{self.p_binmin}_{self.p_binmax}.pdf'
        mloutputfig.savefig(figname)
        # _____________________________________________
        plt.rcParams["figure.figsize"] = (10, 9)
        roccurvefig = plot_utils.plot_roc(self.traintestdata[3],
                                          self.ypredtest_hipe4ml, None,
                                          leglabels,
                                          self.average_method_hipe4ml,
                                          self.roc_method_hipe4ml)
        figname = f'{self.dirmlplot}/ROCCurveAll_pT_{self.p_binmin}_{self.p_binmax}.pdf'
        roccurvefig.savefig(figname)
        # _____________________________________________
        plt.rcParams["figure.figsize"] = (10, 9)
        roccurvettfig = plot_utils.plot_roc_train_test(
            self.traintestdata[3], self.ypredtest_hipe4ml,
            self.traintestdata[1], self.ypredtrain_hipe4ml, None, leglabels,
            self.average_method_hipe4ml, self.roc_method_hipe4ml)
        figname = f'{self.dirmlplot}/ROCCurveTrainTest_pT_{self.p_binmin}_{self.p_binmax}.pdf'
        roccurvettfig.savefig(figname)
        # _____________________________________________
        precisionrecallfig = plot_utils.plot_precision_recall(
            self.traintestdata[3], self.ypredtest_hipe4ml, leglabels)
        figname = f'{self.dirmlplot}/PrecisionRecallAll_pT_{self.p_binmin}_{self.p_binmax}.pdf'
        precisionrecallfig.savefig(figname)
        # _____________________________________________
        plt.rcParams["figure.figsize"] = (12, 7)
        featuresimportancefig = plot_utils.plot_feature_imp(
            self.traintestdata[2][self.v_train], self.traintestdata[3],
            self.p_hipe4ml_model, leglabels)
        for i in range(0, len(featuresimportancefig)):
            figname = (f'{self.dirmlplot}/FeatureImportanceOpt{i}_'
                       f'pT_{self.p_binmin}_{self.p_binmax}.pdf')
            featuresimportancefig[i].savefig(figname)