Dynamical Models of Stock Prices Based on Technical Trading Rules-Part II: Analysis of the Model

Authored by Li-Xin Wang

Date Published: 2015

DOI: 10.1109/tfuzz.2014.2346244

Sponsors: No sponsors listed

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Model Documentation: Other Narrative Mathematical description

Model Code URLs: Model code not found

Abstract

In Part II of this study, we concentrate our analysis on the price dynamicalmodel with themoving average rules developed in Part I. By decomposing the excessive demand function, we reveal that it is the interplay between trend-following and contrarian actions that generates the price chaos and gives parameter ranges for the price series to change from divergence to chaos and to oscillation. We prove that the price dynamicalmodel has an infinite number of equilibriums, but all these equilibriums are unstable. We demonstrate the short-term predictability of the price volatility and derive the detailed formulas of the Lyapunov exponent as functions of the model parameters. We showthat although the price is chaotic, the volatility converges to some constant very quickly at the rate of the Lyapunov exponent. We extract the formula relating the converged volatility to the model parameters based on Monte Carlo simulations. We explore the circumstances under which the returns are uncorrelated and illustrate in detail as to how the correlation index changes with the model parameters. Finally, we plot the strange attractor and the return distribution of the chaotic price series to illustrate the complex structure and the fat-tailed distribution of the returns.
Tags
Equilibrium Economics Chaos Markets Facts