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Three-state Opinion Dynamics for Financial Markets on Complex Networks

Author

Listed:
  • Bernardo J. Zubillaga
  • Mateus F. B. Granha
  • Andr'e L. M. Vilela
  • Chao Wang
  • Kenric P. Nelson
  • H. Eugene Stanley

Abstract

This work investigates the effects of complex networks on the collective behavior of a three-state opinion formation model in economic systems. Our model considers two distinct types of investors in financial markets: noise traders and fundamentalists. Financial states evolve via probabilistic dynamics that include economic strategies with local and global influences. The local majoritarian opinion drives noise traders' market behavior, while the market index influences the financial decisions of fundamentalist agents. We introduce a level of market anxiety $q$ present in the decision-making process that influences financial action. In our investigation, nodes of a complex network represent market agents, whereas the links represent their financial interactions. We investigate the stochastic dynamics of the model on three distinct network topologies, including scale-free networks, small-world networks and Erd{\"o}s-R\'enyi random graphs. Our model mirrors various traits observed in real-world financial return series, such as heavy-tailed return distributions, volatility clustering, and short-term memory correlation of returns. The histograms of returns are fitted by coupled Gaussian distributions, quantitatively revealing transitions from a leptokurtic to a mesokurtic regime under specific economic heterogeneity. We show that the market dynamics depend mainly on the average agent connectivity, anxiety level, and market composition rather than on specific features of network topology.

Suggested Citation

  • Bernardo J. Zubillaga & Mateus F. B. Granha & Andr'e L. M. Vilela & Chao Wang & Kenric P. Nelson & H. Eugene Stanley, 2024. "Three-state Opinion Dynamics for Financial Markets on Complex Networks," Papers 2404.18709, arXiv.org, revised Apr 2024.
  • Handle: RePEc:arx:papers:2404.18709
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