Source code for zoo.orca.learn.metrics

#
# Copyright 2018 Analytics Zoo Authors.
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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
#
#     http://www.apache.org/licenses/LICENSE-2.0
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# Unless required by applicable law or agreed to in writing, software
# distributed under the License is distributed on an "AS IS" BASIS,
# WITHOUT WARRANTIES OR CONDITIONS OF ANY KIND, either express or implied.
# See the License for the specific language governing permissions and
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from abc import ABC, abstractmethod


[docs]class Metrics(ABC):
[docs] @abstractmethod def get_metrics(self): pass
[docs] @staticmethod def convert_metrics_list(metrics): if metrics is None: return None if isinstance(metrics, list): keras_metrics = [] for m in metrics: if isinstance(m, Metrics): keras_metrics.append(m.get_metrics()) else: keras_metrics.append(m) return keras_metrics else: if isinstance(metrics, Metrics): return metrics.get_metrics() else: raise ValueError("Only orca metrics are supported, but get " + metrics.__class__.__name__)
[docs]class AUC(Metrics): """ Metric for binary(0/1) classification, support single label and multiple labels. # Arguments threshold_num: The number of thresholds. The quality of approximation may vary depending on threshold_num. >>> meter = AUC(20) """ def __init__(self, threshold_num=200): from zoo.pipeline.api.keras.metrics import AUC as KerasAUC self.metrics = KerasAUC(threshold_num=threshold_num)
[docs] def get_metrics(self): return self.metrics
[docs]class MAE(Metrics): """ Metric for mean absoluate error, similar from MAE criterion >>> mae = MAE() """ def __init__(self): from zoo.pipeline.api.keras.metrics import MAE as KerasMAE self.metrics = KerasMAE()
[docs] def get_metrics(self): return self.metrics
[docs]class Accuracy(Metrics): """ Measures top1 accuracy for multi-class classification or accuracy for binary classification. # Arguments zero_based_label: Boolean. Whether target labels start from 0. Default is True. If False, labels start from 1. Note that this only takes effect for multi-class classification. For binary classification, labels ought to be 0 or 1. >>> acc = Accuracy() """ def __init__(self, zero_based_label=True): from zoo.pipeline.api.keras.metrics import Accuracy as KerasAccuracy self.metrics = KerasAccuracy(zero_based_label=zero_based_label)
[docs] def get_metrics(self): return self.metrics
[docs]class SparseCategoricalAccuracy(Metrics): """ Measures top1 accuracy for multi-class classification with sparse target. >>> acc = SparseCategoricalAccuracy() """ def __init__(self): from zoo.pipeline.api.keras.metrics import \ SparseCategoricalAccuracy as KerasSparseCategoricalAccuracy self.metrics = KerasSparseCategoricalAccuracy()
[docs] def get_metrics(self): return self.metrics
[docs]class CategoricalAccuracy(Metrics): """ Measures top1 accuracy for multi-class classification when target is one-hot encoded. >>> acc = CategoricalAccuracy() """ def __init__(self): from zoo.pipeline.api.keras.metrics import CategoricalAccuracy as KerasCategoricalAccuracy self.metrics = KerasCategoricalAccuracy()
[docs] def get_metrics(self): return self.metrics
[docs]class BinaryAccuracy(Metrics): """ Measures top1 accuracy for binary classification with zero-based index. >>> acc = BinaryAccuracy() """ def __init__(self): from zoo.pipeline.api.keras.metrics import BinaryAccuracy as KerasBinaryAccuracy self.metrics = KerasBinaryAccuracy()
[docs] def get_metrics(self): return self.metrics
[docs]class Top5Accuracy(Metrics): """ Measures top5 accuracy for multi-class classification. # Arguments zero_based_label: Boolean. Whether target labels start from 0. Default is True. If False, labels start from 1. >>> acc = Top5Accuracy() """ def __init__(self): from zoo.pipeline.api.keras.metrics import Top5Accuracy as KerasTop5Accuracy self.metrics = KerasTop5Accuracy()
[docs] def get_metrics(self): return self.metrics