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A privacy-preserving decentralized credit scoring method based on multi-party information

  • Haoran He
  • , Zhao Wang
  • , Hemant Jain
  • , Cuiqing Jiang
  • , Shanlin Yang
  • Hefei University of Technology
  • University of Tennessee at Chattanooga
  • Key Lab of the Ministry of Education for Process Control and Efficiency Egineering

科研成果: 期刊稿件文章同行评审

39 引用 (Scopus)

摘要

With society's wide-scale adoption of information technology, significant information about borrowers is distributed across various parties, information that can be jointly used to improve credit scoring. However, use of such information faces many challenges, such as the problems of preserving privacy and information redundancy. To address these challenges in leveraging multi-source information for credit scoring, we propose a decentralized multi-party method based on logistic regression. Specifically, we formulate a logistic regression model using the vertical federated learning paradigm. To preserve data privacy during multi-party collaborative model training, we use additively homomorphic encryption based on the second-order Taylor series expansion of the loss function and its gradient. To address information redundancy and to improve the performance of the credit scoring model, we use the proposed HE-DPGD algorithm to estimate the distributed coefficients in a privacy-preserving setting. Empirical evaluation shows that the proposed method can leverage information from multiple parties securely and effectively.

源语言英语
文章编号113910
期刊Decision Support Systems
166
DOI
出版状态已出版 - 3月 2023
已对外发布

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