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Modelling viable supply networks with cooperative adaptive financing

Author

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  • Yaniv Proselkov
  • Liming Xu
  • Alexandra Brintrup

Abstract

We propose a financial liquidity policy sharing method for firm-to-firm supply networks, introducing a scalable autonomous control function for viable complex adaptive supply networks. Cooperation and competition in supply chains is reconciled through overlapping collaborative sets, making firms interdependent and enabling distributed risk governance. How cooperative range - visibility - affects viability is studied using dynamic complex adaptive systems modelling. We find that viability needs cooperation; visibility and viability grow together in scale-free supply networks; and distributed control, where firms only have limited partner information, outperforms centralised control. This suggests that policy toward network viability should implement distributed supply chain financial governance, supporting interfirm collaboration, to enable autonomous control.

Suggested Citation

  • Yaniv Proselkov & Liming Xu & Alexandra Brintrup, 2026. "Modelling viable supply networks with cooperative adaptive financing," Papers 2601.13210, arXiv.org.
  • Handle: RePEc:arx:papers:2601.13210
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    References listed on IDEAS

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