数据分类评价指标综述

H. M., Sulaiman M.N
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引用次数: 964

摘要

在分类训练中,评价指标对获得最优分类器起着至关重要的作用。因此,选择合适的评价指标是判别和获得最优分类器的关键。本文系统地回顾了专门设计用于优化生成分类器的判别器的相关评价指标。一般来说,许多生成分类器在分类训练中使用准确率作为区分最优解的度量。然而,该方法的准确性存在显著性差、可辨别性差、信息量小和对多数类数据的偏倚等缺点。本文还简要讨论了专门用于判别最优解的其他度量。还讨论了这些替代度量的缺点。最后,本文提出了在构造新的鉴别度量时必须考虑的五个重要方面。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Review On Evaluation Metrics For Data Classification Evaluations
Evaluation metric plays a critical role in achieving the optimal classifier during the classification training. Thus, a selection of suitable evaluation metric is an important key for discriminating and obtaining the optimal classifier. This paper systematically reviewed the related evaluation metrics that are specifically designed as a discriminator for optimizing generative classifier. Generally, many generative classifiers employ accuracy as a measure to discriminate the optimal solution during the classification training. However, the accuracy has several weaknesses which are less distinctiveness, less discriminability, less informativeness and bias to majority class data. This paper also briefly discusses other metrics that are specifically designed for discriminating the optimal solution. The shortcomings of these alternative metrics are also discussed. Finally, this paper suggests five important aspects that must be taken into consideration in constructing a new discriminator metric.
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