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Imbalanced Learning Based on Logistic Discrimination

机译:基于逻辑歧视的学习失衡

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摘要

In recent years, imbalanced learning problem has attracted more and more attentions from both academia and industry, and the problem is concerned with the performance of learning algorithms in the presence of data with severe class distribution skews. In this paper, we apply the well-known statistical model logistic discrimination to this problem and propose a novel method to improve its performance. To fully consider the class imbalance, we design a new cost function which takes into account the accuracies of both positive class and negative class as well as the precision of positive class. Unlike traditional logistic discrimination, the proposed method learns its parameters by maximizing the proposed cost function. Experimental results show that, compared with other state-of-the-art methods, the proposed one shows significantly better performance on measures of recall, g-mean, f-measure, AUC, and accuracy.
机译:近年来,不平衡的学习问题已引起学术界和业界的越来越多的关注,并且该问题与存在严重类别分布偏差的数据存在时的学习算法性能有关。在本文中,我们将众所周知的统计模型逻辑判别应用于该问题,并提出了一种提高其性能的新方法。为了充分考虑类别的不平衡,我们设计了一个新的成本函数,其中考虑了正面类别和负面类别的准确性以及正面类别的精度。与传统的逻辑判别法不同,该方法通过最大化成本函数来学习其参数。实验结果表明,与其他最新方法相比,所提出的方法在召回率,g均值,f值,AUC和准确性方面表现出明显更好的性能。

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