92 lines
2.9 KiB
Python
92 lines
2.9 KiB
Python
import os
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import json
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from matplotlib import pyplot
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from joblib import dump, load
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from sklearn import tree
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from sklearn.feature_extraction import DictVectorizer
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from objects.mines.disarming.mine_parameters import MineParameters
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from objects.mines.disarming.parameter_json import generate_data
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class DecisionTree:
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def __init__(self, clf_source: str = None, vec_source: str = None):
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if clf_source is not None and vec_source is not None:
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self.load(clf_source, vec_source)
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else:
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self.clf = None
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self.vec = None
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def build(self, training_file: str, depth: int):
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path = os.path.join("../..", "..", "resources", "data", training_file)
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samples = list()
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results = list()
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with open(path, "r") as training_file:
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for sample in training_file:
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s, r = self._process_input_line(sample)
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samples.append(s)
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results.append(r)
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# vec transforms X (a list of dictionaries of string-string pairs) to binary arrays for tree to work on
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self.vec = DictVectorizer()
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# create and run Tree Clasifier upon provided data
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self.clf = tree.DecisionTreeClassifier(max_depth=depth)
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self.clf = self.clf.fit(self.vec.fit_transform(samples).toarray(), results)
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# print a tree (not necessary)
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print(tree.export_text(self.clf, feature_names=self.vec.get_feature_names()))
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# plot a tree (not necessary)
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# fig = pyplot.figure(figsize=(50, 40))
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# _ = tree.plot_tree(self.clf,
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# feature_names=self.vec.get_feature_names(),
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# class_names=self.clf.classes_,
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# filled=True)
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# fig.savefig("decistion_tree.png")
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def save(self):
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dump(self.clf, 'decision_tree.joblib')
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dump(self.vec, 'dict_vectorizer.joblib')
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def load(self, clf_file, vec_file):
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self.clf = load(clf_file)
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self.vec = load(vec_file)
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def get_answer(self, mine_params):
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return self.clf.predict(self.vec.transform(mine_params).toarray())
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def test(self):
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mistakes = 0
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for _ in range(1000):
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mine_params = MineParameters().jsonifyable_dict()
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correct = mine_params['wire']
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del mine_params['wire']
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answer = self.get_answer(mine_params)
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if correct != answer:
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print(f"Answer: {answer}\nCorrect: {correct}")
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mistakes += 1
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print(f"Accuracy: {100 - (mistakes / 10)}")
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@staticmethod
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def _process_input_line(line):
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data = json.loads(line.strip())
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result = data['wire']
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del data['wire']
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sample = data
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return sample, result
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if __name__ == "__main__":
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# generate_data("training_set.txt", 12000)
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decision_tree = DecisionTree()
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decision_tree.build("training_set.txt", 15)
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decision_tree.test()
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decision_tree.save()
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