Herding interactions as an opportunity to prevent extreme events in financial markets
Authored by Aleksejus Kononovicius
Date Published: 2015
DOI: 10.1140/epjb/e2015-60160-0
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Abstract
A characteristic feature of complex systems in general is a tight
coupling between their constituent parts. In complex socio-economic
systems this kind of behavior leads to self-organization, which may be
both desirable (e.g. social cooperation) and undesirable (e.g. mass
panic, financial ``bubbles{''} or ``crashes{''}). Abundance of the
empirical data as well as general insights into the trading behavior
enables the creation of simple agent-based models reproducing
sophisticated statistical features of the financial markets. In this
contribution we consider a possibility to prevent self-organized extreme
events in financial market modeling its behavior using agent-based
herding model, which reproduces main stylized facts of the financial
markets. We show that introduction of agents with predefined
fundamentalist trading behavior helps to significantly reduce the
probability of the extreme price fluctuations events. We also
investigate random trading, which was previously found to be promising
extreme event prevention strategy, and find that its impact on the
market has to be considered among other opportunities to stabilize the
markets.
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