Building an artificial stock market populated by reinforcement‐learning agents
In this paper we propose an artificial stock market model based on interaction of heterogeneous agents whose forward‐looking behaviour is driven by the reinforcement‐learning algorithm combined with some evolutionary selection mechanism. We use the model for the analysis of market self‐regulation a...
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Vilnius Gediminas Technical University
2009-12-01
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doaj-663f9928259c4d57b56443a0164a39962021-07-02T14:43:44ZengVilnius Gediminas Technical UniversityJournal of Business Economics and Management1611-16992029-44332009-12-0110410.3846/1611-1699.2009.10.329-341Building an artificial stock market populated by reinforcement‐learning agentsAleksandras Vytautas Rutkauskas0Tomas Ramanauskas1Vilnius Gediminas Technical University, Saulėtekio al. 11, LT-10223 Vilnius, LithuaniaVilnius Gediminas Technical University, Saulėtekio al. 11, LT-10223 Vilnius, Lithuania In this paper we propose an artificial stock market model based on interaction of heterogeneous agents whose forward‐looking behaviour is driven by the reinforcement‐learning algorithm combined with some evolutionary selection mechanism. We use the model for the analysis of market self‐regulation abilities, market efficiency and determinants of emergent properties of the financial market. Distinctive and novel features of the model include strong emphasis on the economic content of individual decision‐making, application of the Q‐learning algorithm for driving individual behaviour, and rich market setup. Along with that a parallel version of the model is presented, which is mainly based on research of current changes in the market, as well as on search of newly emerged consistent patterns, and which has been repeatedly used for optimal decisions’ search experiments in various capital markets. First Publish Online: 14 Oct 2010 https://journals.vgtu.lt/index.php/JBEM/article/view/6245artifi cial stock market modelmarket priceagent heterogeneitystock value |
collection |
DOAJ |
language |
English |
format |
Article |
sources |
DOAJ |
author |
Aleksandras Vytautas Rutkauskas Tomas Ramanauskas |
spellingShingle |
Aleksandras Vytautas Rutkauskas Tomas Ramanauskas Building an artificial stock market populated by reinforcement‐learning agents Journal of Business Economics and Management artifi cial stock market model market price agent heterogeneity stock value |
author_facet |
Aleksandras Vytautas Rutkauskas Tomas Ramanauskas |
author_sort |
Aleksandras Vytautas Rutkauskas |
title |
Building an artificial stock market populated by reinforcement‐learning agents |
title_short |
Building an artificial stock market populated by reinforcement‐learning agents |
title_full |
Building an artificial stock market populated by reinforcement‐learning agents |
title_fullStr |
Building an artificial stock market populated by reinforcement‐learning agents |
title_full_unstemmed |
Building an artificial stock market populated by reinforcement‐learning agents |
title_sort |
building an artificial stock market populated by reinforcement‐learning agents |
publisher |
Vilnius Gediminas Technical University |
series |
Journal of Business Economics and Management |
issn |
1611-1699 2029-4433 |
publishDate |
2009-12-01 |
description |
In this paper we propose an artificial stock market model based on interaction of heterogeneous agents whose forward‐looking behaviour is driven by the reinforcement‐learning algorithm combined with some evolutionary selection mechanism. We use the model for the analysis of market self‐regulation abilities, market efficiency and determinants of emergent properties of the financial market. Distinctive and novel features of the model include strong emphasis on the economic content of individual decision‐making, application of the Q‐learning algorithm for driving individual behaviour, and rich market setup. Along with that a parallel version of the model is presented, which is mainly based on research of current changes in the market, as well as on search of newly emerged consistent patterns, and which has been repeatedly used for optimal decisions’ search experiments in various capital markets.
First Publish Online: 14 Oct 2010
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topic |
artifi cial stock market model market price agent heterogeneity stock value |
url |
https://journals.vgtu.lt/index.php/JBEM/article/view/6245 |
work_keys_str_mv |
AT aleksandrasvytautasrutkauskas buildinganartificialstockmarketpopulatedbyreinforcementlearningagents AT tomasramanauskas buildinganartificialstockmarketpopulatedbyreinforcementlearningagents |
_version_ |
1721327697902174208 |