Source code for deeppavlov.metrics.fmeasure_classification

# Copyright 2017 Neural Networks and Deep Learning lab, MIPT
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# Licensed under the Apache License, Version 2.0 (the "License");
# you may not use this file except in compliance with the License.
# You may obtain a copy of the License at
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#     http://www.apache.org/licenses/LICENSE-2.0
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# Unless required by applicable law or agreed to in writing, software
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import numpy as np
from typing import List, Tuple

from sklearn.metrics import f1_score

from deeppavlov.core.common.metrics_registry import register_metric
from deeppavlov.models.classifiers.utils import labels2onehot


[docs]@register_metric('classification_f1') def classification_fmeasure(y_true: List[list], y_predicted: List[Tuple[list, dict]], average="macro") -> float: """ Calculate F1-measure macro Args: y_true: true binary labels y_predicted: predictions. \ Each prediction is a tuple of two elements \ (predicted_labels, dictionary like {"label_i": probability_i} ) \ where probability is float or keras.tensor average: determines the type of averaging performed on the data Returns: F1-measure """ classes = np.array(list(y_predicted[0][1].keys())) y_true_one_hot = labels2onehot(y_true, classes) y_pred_labels = [y_predicted[i][0] for i in range(len(y_predicted))] y_pred_one_hot = labels2onehot(y_pred_labels, classes) return f1_score(y_true_one_hot, y_pred_one_hot, average=average)
[docs]@register_metric('classification_f1_weighted') def classification_fmeasure_weighted(y_true: List[list], y_predicted: List[Tuple[list, dict]], average="weighted") -> float: """ Calculate F1-measure weighted Args: y_true: true binary labels y_predicted: predictions. \ Each prediction is a tuple of two elements \ (predicted_labels, dictionary like {"label_i": probability_i} ) \ where probability is float or keras.tensor average: determines the type of averaging performed on the data Returns: F1-measure """ classes = np.array(list(y_predicted[0][1].keys())) y_true_one_hot = labels2onehot(y_true, classes) y_pred_labels = [y_predicted[i][0] for i in range(len(y_predicted))] y_pred_one_hot = labels2onehot(y_pred_labels, classes) return f1_score(y_true_one_hot, y_pred_one_hot, average=average)