Research on Risk Management Strategies of Supply Chain Finance in Big Data Environment
Abstract
quality, credit assessment, and technology application while enhancing efficiency and transparency. This paper explores the core issues and
optimisation strategies of supply chain finance risk management in the big data environment through literature analysis and case studies. It is
found that the traditional risk management model can hardly cope with complex risk transmission and market fluctuations due to over-reliance
on core enterprise credit, single data dimension and lagging dynamic assessment. Future research needs to further explore the construction of
data sharing mechanism, application of supervisory science and technology, and whole chain risk monitoring system, in order to promote the
supply chain financial risk management to the direction of intelligent and ecological continuous evolution.
Keywords
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DOI: http://dx.doi.org/10.70711/aitr.v2i10.7141
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