def compute(self):
        import timeit
        start = timeit.default_timer()

        XTrain, XTest, yTrain, yTest = ClassificationModel.preprocessData(self.args, False)

        classifier = DecisionTree.computeModel(XTrain, yTrain, self.args.criterion)
        yPred = ClassificationModel.predictModel(classifier, XTest)
        confusionMatrix = ClassificationModel.getConfusionMatrix(yPred, yTest)
        rocCurve = ClassificationModel.getRocCurve(yPred, yTest)

        if(self.args.print_accuracy):
            print(confusionMatrix, ClassificationModel.getAccuracy(confusionMatrix))

        stop = timeit.default_timer()

        return confusionMatrix, rocCurve, ClassificationModel.getAccuracy(confusionMatrix), stop - start, classifier
Пример #2
0
    def compute(self):
        import timeit
        start = timeit.default_timer()

        XTrain, XTest, yTrain, yTest = ClassificationModel.preprocessData(
            self.args, True)

        classifier = KNN.computeModel(
            XTrain, yTrain, self.args.n_neighbors,
            self.args.power_parameter_minkowski_metric)
        yPred = ClassificationModel.predictModel(classifier, XTest)
        confusionMatrix = ClassificationModel.getConfusionMatrix(yPred, yTest)
        rocCurve = ClassificationModel.getRocCurve(yPred, yTest)

        if (self.args.print_accuracy):
            print(confusionMatrix,
                  ClassificationModel.getAccuracy(confusionMatrix))

        stop = timeit.default_timer()

        return confusionMatrix, rocCurve, ClassificationModel.getAccuracy(
            confusionMatrix), stop - start, classifier