Chaos, border collisions and stylized empirical facts in an asset pricing model with heterogeneous agents

Mikhail Anufriev*, Laura Gardini, Davide Radi

*Autore corrispondente per questo lavoro

Risultato della ricerca: Contributo in rivistaArticolo in rivista

Abstract

An asset pricing model with chartists, fundamentalists and trend followers is considered. A market maker adjusts the asset price in the direction of the excess demand at the end of each trading session. An exogenously given fundamental price discriminates between a bull market and a bear market. The buying and selling orders of traders change moving from a bull market to a bear market. Their asymmetric propensity to trade leads to a discontinuity in the model, with its deterministic skeleton given by a two-dimensional piecewise linear dynamical system in discrete time. Multiple attractors, such as a stable fixed point and one or more attracting cycles or cycles and chaotic attractors, appear through border collision bifurcations. The multi-stability regions are underlined by means of two-dimensional bifurcation diagrams, where the border collision bifurcation curves are detected in analytic form at least for basic cycles with symbolic sequences LR n and RL n. A statistical analysis of the simulated time series of the asset returns, generated by perturbing the deterministic dynamics with a random walk process, indicates that this is one of the simplest asset pricing models which are able to replicate stylized empirical facts, such as excess volatility, fat tails and volatility clustering.
Lingua originaleEnglish
pagine (da-a)993-1017
Numero di pagine25
RivistaNonlinear Dynamics
Volume102
DOI
Stato di pubblicazionePubblicato - 2020

Keywords

  • Chaos and border collision bifurcations
  • Heterogeneous traders
  • Piecewise linear asset pricing model
  • Stylized empirical facts of asset returns

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