Artificial stock markets with different maturity levels: simulation of information asymmetry and herd behavior using agent-based and network models
Authored by Hazem Krichene, Mhamed-Ali El-Aroui
Date Published: 2018
DOI: 10.1007/s11403-017-0191-6
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Abstract
This paper aims mainly at building artificial stock markets with
different maturity levels by modeling information asymmetry and herd
behavior. The developed artificial markets are multi-assets,
order-driven and populated by agents having heterogeneous behaviors and
information. Agents are defined by their information and their herd
behavior levels. Agents trade multiple risky assets based on their
wealth, their behaviors and their available information which spread
among multiple behavioral networks. In a novel contribution to
artificial stock markets literature, agents' behaviors modeling is mixed
with social network simulation to reproduce different degrees of
information asymmetry and herd behavior based on several assortative
topologies. Several simulations validated the proposed model since
univariate and multivariate stylized facts were reproduced both for
mature and immature stock markets. The proposed artificial stock market
can be considered as a first step toward decision and simulation tools
for optimal management, strategy analysis and predictions evolution of
immature stock markets.
Tags
Agent-based model
information asymmetry
herd behavior
assortativity
Impact
Multi-assets trading
Immature stock markets