Document Type
Article
Publication Date
Summer 9-10-2015
Abstract
We study asset pricing dynamics in artificial financial markets model. The financial market is populated with agents following two heterogeneous trading beliefs, the technical and the fundamental prediction rules. Agents switch between trading rules with respect to their past performance. The agents are loss averse over asset price fluctuations. Loss aversion behaviour depends on the past performance of the trading strategies in terms of an evolutionary fitness measure. We propose a novel application of the prospect theory to agent-based modelling, and by simulation, the effect of evolutionary fitness measure on adaptive belief system is investigated. For comparison, we study pricing dynamics of a financial market populated with chartists perceive losses and gains symmetrically. One of our contributions is validating the agent-based models using real financial data of the Egyptian Stock Exchange. We find that our framework can explain important stylized facts in financial time series, such as random walk price behaviour, bubbles and crashes, fat-tailed return distributions, power-law tails in the distribution of returns, excess volatility, volatility clustering, the absence of autocorrelation in raw returns, and the power-law autocorrelations in absolute returns. In addition to this, we find that loss aversion improves market quality and market stability.
Recommended Citation
Selim, Kamal Samy Prof; Okasha, Ahmed Eltabee Dr.; and M. Ezzat, Heba Dr., "Loss Aversion, Adaptive Beliefs, and Asset Pricing Dynamics" (2015). Business Administration. 76.
https://buescholar.bue.edu.eg/bus_admin/76
Included in
Business Analytics Commons, Finance and Financial Management Commons, Management Sciences and Quantitative Methods Commons, Portfolio and Security Analysis Commons
Comments
This article is extracted from my PhD thesis entitled 'On Agent-Based Modelling for Financial Markets'.