基于协同过滤的信用评分模型

Xin Zheng
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引用次数: 3

摘要

为了确保财产安全,风险评估在现代社会中起着至关重要的作用。信用评分作为风险敞口评级的一个重要分支,成为人们关注的热点。因此,建立了各种信用评分模型来评价客户的信用等级。本文构造了一种简单的信用评分模型——基于矩阵分解的协同过滤模型,该模型考虑信息熵对连续属性进行离散化(CF-MF-D-IE)。在机器学习数据库UCI Repository中的两个重要信用数据集上对该模型进行了测试。CF-MF-D-IE分类准确率优于非离散数据协同过滤和离散数据支持向量机协同过滤。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Credit Scoring Model Based on Collaborative Filtering
To ensure property safety, risk assessment plays an essential role in modern society. Credit scoring, which is a significant branch of exposure rating, becomes a hot topic. As a result, various kinds of credit scoring models are established to evaluate the customers' credit rank. In this paper, a simple credit scoring model, Collaborative Filtering based on Matrix Factorization with data whose continuous attributes are discretized considering Information Entropy (CF-MF-D-IE), is constructed to solve credit scoring issues. The proposed model is tested on two important credit data sets in UCI Repository of Machine Learning databases. Compared with Collaborative Filtering using non-discretized data and Support Vector Machines with discretized data, CF-MF-D-IE has better classification accuracy rate.
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