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Dimensional Reduction of Solvency Contagion Dynamics on Financial Networks

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  • Gianmarco Ricciardi
  • Guido Montagna
  • Guido Caldarelli
  • Giulio Cimini

Abstract

Modelling systems with networks has been a powerful approach to tame the complexity of several phenomena. Unfortunately, such an approach is often made difficult by the large number of variables to take into consideration. Methods of dimensional reduction are useful tools to rescale a complex dynamical network down to a low-dimensional effective system and thus to capture the global features of the dynamics. Here we study the application of the degree-weighted and spectral reduction methods to an important class of dynamical processes on networks: the propagation of credit shocks within an interbank network, modelled according to the DebtRank algorithm. In particular we introduce an effective version of the dynamics, characterised by functions with continuous derivatives that can be handled by the dimensional reduction. We test the reduction methods against the full dynamical system in different interbank market settings: homogeneous and heterogeneous networks generated from state-of-the-art reconstruction methods as well as networks derived from empirical e-MID data. Our results indicate that, for proper choices of the bank default probability, reduction methods are able to provide reliable estimates of systemic risk in the market, with the spectral reduction better handling heterogeneous networks. Finally we provide new physical insights on the nature and working principles of dimensional reduction methods.

Suggested Citation

  • Gianmarco Ricciardi & Guido Montagna & Guido Caldarelli & Giulio Cimini, 2022. "Dimensional Reduction of Solvency Contagion Dynamics on Financial Networks," Papers 2207.11491, arXiv.org, revised Aug 2022.
  • Handle: RePEc:arx:papers:2207.11491
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    File URL: http://arxiv.org/pdf/2207.11491
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