期刊
INTERNATIONAL JOURNAL OF PRODUCTION ECONOMICS
卷 268, 期 -, 页码 -出版社
ELSEVIER
DOI: 10.1016/j.ijpe.2023.109095
关键词
Federated learning; Supply Chain Financing; Privacy preserving; Machine learning; Artificial intelligence; Supply chain risk
Supply Chain Financing is used to optimize cash flows in supply networks, but recent scandals have shown inefficiencies in risk evaluation. This paper proposes a Federated Learning framework to address order-level risk evaluation.
Supply Chain Financing (SCF) is increasingly utilised as an effective method for optimising cash flows in supply networks. With increased popularity several financial institutions have begun offering SCF to businesses. However various recent scandals have highlighted inefficiencies in the evaluation of risks involved. In this paper we argue this is due to a mismatch between the firm-level features used to evaluate risk and what SCF is given for, which is a particular order. However order-level risk evaluation is difficult as companies do not wish to share their datasets with funders. Furthermore, Small-to-Medium Enterprises (SMEs) themselves may not have enough data to conduct order-level risk evaluation. We propose a Federated Learning (FL) framework to overcome these issues, opening up the possibility for order-level risk evaluation. FL allows collective, order level model training whilst preserving privacy of data owners. A case study in the aerospace industry indicates that FL can be applied to predict buyers' late payment risk with minimal performance loss.
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