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Likelihood ratio equivalence and imbalanced binary classification

机译:似然比等价和不平衡二元分类

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摘要

This contribution proves that neutral re-balancing mechanisms, that do not alter the likelihood ratio, and training discriminative machines using Bregman divergences as surrogate costs are necessary and sufficient conditions to estimate the likelihood ratio of imbalanced binary classification problems in a consistent manner. These two conditions permit the estimation of the theoretical Neyman-Pearson operating characteristic corresponding to the problem under study. In practice, a classifier operates at a certain working point corresponding to, for example, a given false positive rate. This perspective allows the introduction of an additional principled procedure to improve classification performance by means of a second design step in which more weight is assigned to the appropriate training samples. The paper includes a number of examples that demonstrate the performance capabilities of the methods presented, and concludes with a discussion of relevant research directions and open problems in the area. (C) 2019 Elsevier Ltd. All rights reserved.
机译:这一贡献证明,不改变似然比的中立再平衡机制以及使用Bregman散度作为替代成本训练判别机是必要的,并且有足够的条件以一致的方式估计不平衡二元分类问题的似然比。这两个条件允许估算与研究中的问题相对应的理论Neyman-Pearson操作特性。实际上,分类器在对应于例如给定的误报率的某个工作点上进行操作。该观点允许通过第二个设计步骤引入一个附加的有原则的程序来改善分类性能,在第二个设计步骤中,将更多的权重分配给适当的训练样本。本文包括许多示例,这些示例演示了所提出方法的性能,并以相关研究方向和该领域的开放性问题作为讨论的结尾。 (C)2019 Elsevier Ltd.保留所有权利。

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