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通过代价敏感学习实现奈曼-皮尔逊多类分类

Neyman-Pearson Multi-Class Classification via Cost-Sensitive Learning

Journal of the American Statistical Association · 2024
被引 0
ABS 4

中文导读

本文通过强对偶性将多类奈曼-皮尔逊问题与代价敏感学习联系起来,提出两种算法并验证其理论性质,适用于贷款违约预测等错误代价不对称的场景。

Abstract

Most existing classification methods aim to minimize the overall misclassification error rate. However, in applications such as loan default prediction, different types of errors can have varying consequences. To address this asymmetry issue, two popular paradigms have been developed: the Neyman-Pearson (NP) paradigm and the cost-sensitive (CS) paradigm. Previous studies on the NP paradigm have primarily focused on the binary case, while the multi-class NP problem poses a greater challenge due to its unknown feasibility. In this work, we tackle the multi-class NP problem by establishing a connection with the CS problem via strong duality and propose two algorithms. We extend the concept of NP oracle inequalities, crucial in binary classifications, to NP oracle properties in the multi-class context. Our algorithms satisfy these NP oracle properties under certain conditions. Furthermore, we develop practical algorithms to assess the feasibility and strong duality in multi-class NP problems, which can offer practitioners the landscape of a multi-class NP problem with various target error levels. Simulations and real data studies validate the effectiveness of our algorithms. To our knowledge, this is the first study to address the multi-class NP problem with theoretical guarantees. The proposed algorithms have been implemented in the R package npcs, which is available on CRAN.

机器学习分类算法代价敏感学习奈曼-皮尔逊范式