2024
DOI: 10.1371/journal.pone.0301141
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Mesoscale effects of trader learning behaviors in financial markets: A multi-agent reinforcement learning study

Johann Lussange,
Stefano Vrizzi,
Stefano Palminteri
et al.

Abstract: Recent advances in the field of machine learning have yielded novel research perspectives in behavioural economics and financial markets microstructure studies. In this paper we study the impact of individual trader leaning characteristics on markets using a stock market simulator designed with a multi-agent architecture. Each agent, representing an autonomous investor, trades stocks through reinforcement learning, using a centralized double-auction limit order book. This approach allows us to study the impact… Show more

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