示例#1
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 def predict(self, features, level):
     if level == 0:
         vec = vectorize(features, self.feature_template_level_0)
         pred_label = self.classifier_level_0.predict(vec)
     if level == 1:
         vec = vectorize(features, self.feature_template_level_1)
         pred_label = self.classifier_level_1.predict(vec)
     if level == 2:
         vec = vectorize(features, self.feature_template_level_2)
         pred_label = self.classifier_level_2.predict(vec)
     return self.idxrelation_map[pred_label[0]]
示例#2
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 def gen_relation_train_data(self, level):
     for rst_tree in self.rst_tree_instances:
         for feats, relation in rst_tree.generate_relation_samples(
                 self.brown_clusters, level):
             if level == 0:
                 yield vectorize(feats, self.relation_feat_template_level_0
                                 ), self.relation_map[relation]
             if level == 1:
                 yield vectorize(feats, self.relation_feat_template_level_1
                                 ), self.relation_map[relation]
             if level == 2:
                 yield vectorize(feats, self.relation_feat_template_level_2
                                 ), self.relation_map[relation]
示例#3
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 def predict(self, features, dependency_feat, level):
     if level == 0:
         vec = vectorize(features, self.feature_template_level_0)
         # pred_label = self.classifier_level_0.predict(vec)
         pred_label = self.classifier_level_0.predict(np.concatenate([vec.toarray(), dependency_feat], axis=1))
     if level == 1:
         vec = vectorize(features, self.feature_template_level_1)
         # pred_label = self.classifier_level_1.predict(vec)
         pred_label = self.classifier_level_1.predict(np.concatenate([vec.toarray(), dependency_feat], axis=1))
     if level == 2:
         vec = vectorize(features, self.feature_template_level_2)
         # pred_label = self.classifier_level_2.predict(vec)
         pred_label = self.classifier_level_2.predict(np.concatenate([vec.toarray(), dependency_feat], axis=1))
     return self.idxrelation_map[pred_label[0]]
示例#4
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 def gen_action_train_data(self):
     tree = []
     for rst_tree in self.rst_tree_instances:
         print("gen_action_train_data ...")
         for feats, dependency_feats, action in rst_tree.generate_action_samples(
                 self.brown_clusters):
             yield vectorize(feats, self.action_feat_template
                             ), self.action_map[action], dependency_feats[0]
         tree.append(rst_tree)
示例#5
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    def gen_relation_train_data(self, level):
        # trees = pickle.load(open('../data/model/action/tree.bin','rb'))
        for rst_tree in self.rst_tree_instances:
            print("gen_relation_train_data ...")
            # for rst_tree in trees:
            for feats, dependency_feat, relation in rst_tree.generate_relation_samples(
                    self.brown_clusters, level):
                if level == 0:

                    yield vectorize(
                        feats, self.relation_feat_template_level_0
                    ), self.relation_map[relation], dependency_feat[0]
                if level == 1:
                    yield vectorize(
                        feats, self.relation_feat_template_level_1
                    ), self.relation_map[relation], dependency_feat[0]
                if level == 2:
                    yield vectorize(
                        feats, self.relation_feat_template_level_2
                    ), self.relation_map[relation], dependency_feat[0]
示例#6
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    def predict_probs(self, features, dependency_feat):
        """ predict labels and rank the decision label with their confidence
            value, output labels and probabilities
        """
        vec = vectorize(features, self.feature_template)

        # print(vec.toarray().shape)
        # print(np.concatenate([vec.toarray(),dependency_feat],axis=1).shape)

        feats = np.concatenate([vec.toarray(), dependency_feat], axis=1)
        vals = self.classifier.decision_function(feats)

        action_vals = {}
        for idx in range(len(self.idxaction_map)):
            action_vals[self.idxaction_map[idx]] = vals[0, idx]
        sorted_actions = sorted(action_vals.items(), key=itemgetter(1), reverse=True)
        return sorted_actions
示例#7
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 def predict_probs(self, features):
     """ predict labels and rank the decision label with their confidence
         value, output labels and probabilities
     """
     vec = vectorize(features, self.feature_template)
     # vec = self.classifier.transform(vec)
     try:
         vals = self.classifier.decision_function(vec)
     except:
         # try:
         vals = self.classifier.predict_proba(vec.toarray())
         # except:
         #     raise NotImplementedError('Undefined classifier')
     action_vals = {}
     for idx in range(len(self.idxaction_map)):
         action_vals[self.idxaction_map[idx]] = vals[0, idx]
     sorted_actions = sorted(action_vals.items(),
                             key=itemgetter(1),
                             reverse=True)
     return sorted_actions
示例#8
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 def gen_action_train_data(self):
     for rst_tree in self.rst_tree_instances:
         for feats, action in rst_tree.generate_action_samples(
                 self.brown_clusters):
             yield vectorize(
                 feats, self.action_feat_template), self.action_map[action]