Naive Bayes using the expectation-maximization algorithm for reject inference

Billie Anderson
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Abstract

Abstract In the last several years, there has been significant research in applying semi-supervised machine learning models to the reject inference problem. When a financial institution wants to build a model to predict the default of credit applicants, the institution only has a known good/bad outcome loan status for the accepted applicants; this causes an inherent bias in the model. Reject inference is used to infer the good or bad loan status of credit applicants that were rejected by a financial institution. This paper presents a reject inference technique in which a semi-supervised framework is developed using a Naive Bayes model. The framework uses the expectation-maximization (EM) algorithm to incorporate rejected applicants into the parameter estimation of the model using a bootstrapping approach. The proposed method has an advantage over traditional reject inference methods because the rejected applicant data will participate in the estimation of the model parameters, thus avoiding the extrapolation problem. The Naive Bayes model using the EM algorithm is compared to logistic regression and several semi-supervised techniques.
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朴素贝叶斯利用期望最大化算法进行拒绝推理
在过去的几年里,将半监督机器学习模型应用于拒绝推理问题已经有了大量的研究。当金融机构想要建立一个模型来预测信贷申请人的违约情况时,该机构对已接受的申请人只有一个已知的好/坏结果贷款状态;这导致了模型中固有的偏差。拒绝推理用于推断被金融机构拒绝的信贷申请人的良好或不良贷款状态。本文提出了一种基于朴素贝叶斯模型的半监督框架拒绝推理技术。该框架使用期望最大化(EM)算法,采用自举方法将被拒绝的申请人纳入模型的参数估计中。与传统的拒绝推理方法相比,该方法的优点是被拒绝的申请人数据将参与模型参数的估计,从而避免了外推问题。将采用EM算法的朴素贝叶斯模型与逻辑回归和几种半监督技术进行了比较。
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