Loss Aversion, Adaptive Beliefs, and Asset Pricing Dynamics

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...

Full description

Bibliographic Details
Main Authors: Kamal Samy Selim, Ahmed Okasha, Heba M. Ezzat
Format: Article
Language:English
Published: Asia University 2015-01-01
Series:Advances in Decision Sciences
Online Access:http://dx.doi.org/10.1155/2015/971269
id doaj-723721ce2f5c4668a6b53f93a5989674
record_format Article
spelling doaj-723721ce2f5c4668a6b53f93a59896742020-11-24T21:45:10ZengAsia UniversityAdvances in Decision Sciences2090-33592090-33672015-01-01201510.1155/2015/971269971269Loss Aversion, Adaptive Beliefs, and Asset Pricing DynamicsKamal Samy Selim0Ahmed Okasha1Heba M. Ezzat2Department of Social Science Computing, Faculty of Economics and Political Science, Cairo University, Cairo 11431, EgyptDepartment of Social Science Computing, Faculty of Economics and Political Science, Cairo University, Cairo 11431, EgyptDepartment of Social Science Computing, Faculty of Economics and Political Science, Cairo University, Cairo 11431, EgyptWe 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.http://dx.doi.org/10.1155/2015/971269
collection DOAJ
language English
format Article
sources DOAJ
author Kamal Samy Selim
Ahmed Okasha
Heba M. Ezzat
spellingShingle Kamal Samy Selim
Ahmed Okasha
Heba M. Ezzat
Loss Aversion, Adaptive Beliefs, and Asset Pricing Dynamics
Advances in Decision Sciences
author_facet Kamal Samy Selim
Ahmed Okasha
Heba M. Ezzat
author_sort Kamal Samy Selim
title Loss Aversion, Adaptive Beliefs, and Asset Pricing Dynamics
title_short Loss Aversion, Adaptive Beliefs, and Asset Pricing Dynamics
title_full Loss Aversion, Adaptive Beliefs, and Asset Pricing Dynamics
title_fullStr Loss Aversion, Adaptive Beliefs, and Asset Pricing Dynamics
title_full_unstemmed Loss Aversion, Adaptive Beliefs, and Asset Pricing Dynamics
title_sort loss aversion, adaptive beliefs, and asset pricing dynamics
publisher Asia University
series Advances in Decision Sciences
issn 2090-3359
2090-3367
publishDate 2015-01-01
description 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.
url http://dx.doi.org/10.1155/2015/971269
work_keys_str_mv AT kamalsamyselim lossaversionadaptivebeliefsandassetpricingdynamics
AT ahmedokasha lossaversionadaptivebeliefsandassetpricingdynamics
AT hebamezzat lossaversionadaptivebeliefsandassetpricingdynamics
_version_ 1725906113608548352