Ahelegbey Daniel Felix, Giudici Paolo, Hadji-Misheva Branka
Department of Mathematics and Statistics, Boston University, Boston, MA, United States.
Department of Economics and Management, University of Pavia, Pavia, Italy.
Front Artif Intell. 2019 Jun 4;2:8. doi: 10.3389/frai.2019.00008. eCollection 2019.
This paper investigates how to improve statistical-based credit scoring of SMEs involved in P2P lending. The methodology discussed in the paper is a factor network-based segmentation for credit score modeling. The approach first constructs a network of SMEs where links emerge from comovement of latent factors, which allows us to segment the heterogeneous population into clusters. We then build a credit score model for each cluster via lasso-type regularization logistic regression. We compare our approach with the conventional logistic model by analyzing the credit score of over 1,5000 SMEs engaged in P2P lending services across Europe. The result reveals that credit risk modeling using our network-based segmentation achieves higher predictive performance than the conventional model.
本文研究如何改进参与P2P借贷的中小企业基于统计的信用评分。本文讨论的方法是一种基于因子网络的信用评分建模分割方法。该方法首先构建一个中小企业网络,其中的联系源于潜在因子的共同变动,这使我们能够将异质群体划分为不同的集群。然后,我们通过套索型正则化逻辑回归为每个集群构建信用评分模型。我们通过分析欧洲15000多家参与P2P借贷服务的中小企业的信用评分,将我们的方法与传统逻辑模型进行比较。结果表明,使用我们基于网络的分割方法进行信用风险建模比传统模型具有更高的预测性能。