PLoS ONE (Jan 2021)

A reservoir computing approach for forecasting and regenerating both dynamical and time-delay controlled financial system behavior.

  • Rajat Budhiraja,
  • Manish Kumar,
  • Mrinal K Das,
  • Anil Singh Bafila,
  • Sanjeev Singh

DOI
https://doi.org/10.1371/journal.pone.0246737
Journal volume & issue
Vol. 16, no. 2
p. e0246737

Abstract

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Significant research in reservoir computing over the past two decades has revived interest in recurrent neural networks. Owing to its ingrained capability of performing high-speed and low-cost computations this has become a panacea for multi-variate complex systems having non-linearity within their relationships. Modelling economic and financial trends has always been a challenging task owing to their volatile nature and no linear dependence on associated influencers. Prior studies aimed at effectively forecasting such financial systems, but, always left a visible room for optimization in terms of cost, speed and modelling complexities. Our work employs a reservoir computing approach complying to echo-state network principles, along with varying strengths of time-delayed feedback to model a complex financial system. The derived model is demonstrated to act robustly towards influence of trends and other fluctuating parameters by effectively forecasting long-term system behavior. Moreover, it also re-generates the financial system unknowns with a high degree of accuracy when only limited future data is available, thereby, becoming a reliable feeder for any long-term decision making or policy formulations.