def execute_script():
    log_path = os.path.join("..", "tests", "input_data",
                            "roadtraffic50traces.xes")
    # log_path = os.path.join("..", "tests", "input_data", "receipt.xes")
    log = xes_importer.apply(log_path)
    # now, it is possible to get a default representation of an event log
    data, feature_names = log_to_features.apply(
        log, variant=log_to_features.Variants.TRACE_BASED)
    # gets classes representation by final concept:name value (end activity)
    target, classes = get_class_representation.get_class_representation_by_str_ev_attr_value_value(
        log, "concept:name")
    # mine the decision tree given 'data' and 'target'
    clf = tree.DecisionTreeClassifier(max_depth=7)
    clf.fit(data, target)
    # visualize the decision tree
    gviz = dt_vis.apply(
        clf,
        feature_names,
        classes,
        parameters={dt_vis.Variants.CLASSIC.value.Parameters.FORMAT: "svg"})
    dt_vis.view(gviz)

    # gets classes representation by trace duration (threshold between the two classes = 200D)
    target, classes = get_class_representation.get_class_representation_by_trace_duration(
        log, 2 * 8640000)
    # mine the decision tree given 'data' and 'target'
    clf = tree.DecisionTreeClassifier(max_depth=7)
    clf.fit(data, target)
    # visualize the decision tree
    gviz = dt_vis.apply(
        clf,
        feature_names,
        classes,
        parameters={dt_vis.Variants.CLASSIC.value.Parameters.FORMAT: "svg"})
    dt_vis.view(gviz)
Exemple #2
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    def test_61(self):
        import os
        from pm4py.objects.log.importer.xes import importer as xes_importer
        log = xes_importer.apply(os.path.join("input_data", "roadtraffic50traces.xes"))

        from pm4py.objects.log.util import get_log_representation
        str_trace_attributes = []
        str_event_attributes = ["concept:name"]
        num_trace_attributes = []
        num_event_attributes = ["amount"]

        data, feature_names = get_log_representation.get_representation(log, str_trace_attributes, str_event_attributes,
                                                                        num_trace_attributes, num_event_attributes)

        data, feature_names = get_log_representation.get_default_representation(log)

        from pm4py.objects.log.util import get_class_representation
        target, classes = get_class_representation.get_class_representation_by_trace_duration(log, 2 * 8640000)

        from sklearn import tree
        clf = tree.DecisionTreeClassifier()
        clf.fit(data, target)

        from pm4py.visualization.decisiontree import visualizer as dectree_visualizer
        gviz = dectree_visualizer.apply(clf, feature_names, classes)
Exemple #3
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def execute_script():
    # in this case, we obtain a decision tree by alignments on a specific decision point
    log = xes_importer.apply(os.path.join("..", "tests", "input_data", "running-example.xes"))
    net, im, fm = inductive_miner.apply(log)
    # we need to specify a decision point. In this case, the place p_10 is a suitable decision point
    clf, feature_names, classes = algorithm.get_decision_tree(log, net, im, fm, decision_point="p_10")
    # we can visualize the decision tree
    gviz = visualizer.apply(clf, feature_names, classes,
                            parameters={visualizer.Variants.CLASSIC.value.Parameters.FORMAT: "svg"})
    visualizer.view(gviz)
 def test_decisiontree_traceduration(self):
     # to avoid static method warnings in tests,
     # that by construction of the unittest package have to be expressed in such way
     self.dummy_variable = "dummy_value"
     log_path = os.path.join("input_data", "roadtraffic50traces.xes")
     log = xes_importer.apply(log_path)
     data, feature_names = get_log_representation.get_representation(log, [], ["concept:name"], [], ["amount"])
     target, classes = get_class_representation.get_class_representation_by_trace_duration(log, 2 * 8640000)
     clf = tree.DecisionTreeClassifier(max_depth=7)
     clf.fit(data, target)
     gviz = dt_vis.apply(clf, feature_names, classes,
                         parameters={dt_vis.Variants.CLASSIC.value.Parameters.FORMAT: "svg"})
     del gviz
Exemple #5
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 def test_decisiontree_evattrvalue(self):
     # to avoid static method warnings in tests,
     # that by construction of the unittest package have to be expressed in such way
     self.dummy_variable = "dummy_value"
     log_path = os.path.join("input_data", "roadtraffic50traces.xes")
     log = xes_importer.apply(log_path)
     data, feature_names = log_to_features.apply(log, variant=log_to_features.Variants.TRACE_BASED,
                                                 parameters={"str_tr_attr": [], "str_ev_attr": ["concept:name"],
                                                             "num_tr_attr": [], "num_ev_attr": ["amount"]})
     target, classes = get_class_representation.get_class_representation_by_str_ev_attr_value_value(log,
                                                                                                    "concept:name")
     clf = tree.DecisionTreeClassifier(max_depth=7)
     clf.fit(data, target)
     gviz = dt_vis.apply(clf, feature_names, classes,
                         parameters={dt_vis.Variants.CLASSIC.value.Parameters.FORMAT: "svg"})
     del gviz
Exemple #6
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num_event_attributes = ["amount"]
data, feature_names = get_log_representation.get_representation(log, str_trace_attributes, str_event_attributes, num_trace_attributes, num_event_attributes)  #error

data, feature_names = get_log_representation.get_default_representation(log)
import pandas as pd
dataframe = pd.DataFrame(data, columns=feature_names)
dataframe

dataframe.to_csv("features.csv", index=False)

from sklearn import tree
clf = tree.DecisionTreeClassifier()
clf.fit(data, target)

from pm4py.visualization.decisiontree import visualizer as dectree_visualizer
gviz = dectree_visualizer.apply(clf, feature_names, classes)


#-----
import os
from pm4py.objects.log.importer.xes import importer as xes_importer
log = xes_importer.apply(os.path.join("tests", "input_data", "roadtraffic50traces.xes"))

from pm4py.objects.log.util import get_log_representation
str_trace_attributes = []
str_event_attributes = ["concept:name"]
num_trace_attributes = []
num_event_attributes = ["amount"]

data, feature_names = get_log_representation.get_representation(log, str_trace_attributes, str_event_attributes, num_trace_attributes, num_event_attributes)