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An agent-based model of supply chain financing: agents’ strategies, performance, and risk contagions

Yang Yang, Xinli Que, Qian Qian and Hao Fang

Journal of Simulation, 2024, vol. 18, issue 6, 1058-1075

Abstract: Supply chain finance (SCF), which has gained prominent attention from academicians, is a complex process involving various participants. However, previous studies have not provided a comprehensive framework integrating these participants or a consensus on how participants’ strategies influence SCF. Here, a comprehensive framework is proposed to investigate SCF through an agent-based approach. We chose the Chinese market to proxy key model parameters. We find that although banks prefer large businesses, trade credit, and partial credit guarantee still play a pair of main complementary financing channels for small and medium enterprises (SMEs). The cautious strategies of agents indeed significantly decrease the risk contagions in the supply chain. However, marketisation negatively moderates this effect for SMEs. From the banks’ perspective, although longer-term credit policies bring lower risk contagions, they increase the uncertainty of the banks’ risk. In addition, our extended framework also shows that the market-oriented financial system benefits either large business or SMEs as well as smooths the risk fluctuation for banks. This study not only verifies some economic phenomena but also provides a new systematic angle for understanding SCF. We also discuss in detail this study’ important practical insights and theoretical contribution.

Date: 2024
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DOI: 10.1080/17477778.2023.2207747

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