Learning to simulate realistic limit order book markets from data as a
World Agent
- URL: http://arxiv.org/abs/2210.09897v1
- Date: Mon, 26 Sep 2022 09:17:11 GMT
- Title: Learning to simulate realistic limit order book markets from data as a
World Agent
- Authors: Andrea Coletta, Aymeric Moulin, Svitlana Vyetrenko, Tucker Balch
- Abstract summary: Multi-agent market simulators usually require careful calibration to emulate real markets.
Poorly calibrated simulators can lead to misleading conclusions.
We propose a world model simulator that accurately emulates a limit order book market.
- Score: 1.1470070927586016
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: Multi-agent market simulators usually require careful calibration to emulate
real markets, which includes the number and the type of agents. Poorly
calibrated simulators can lead to misleading conclusions, potentially causing
severe loss when employed by investment banks, hedge funds, and traders to
study and evaluate trading strategies. In this paper, we propose a world model
simulator that accurately emulates a limit order book market -- it requires no
agent calibration but rather learns the simulated market behavior directly from
historical data. Traditional approaches fail short to learn and calibrate
trader population, as historical labeled data with details on each individual
trader strategy is not publicly available. Our approach proposes to learn a
unique "world" agent from historical data. It is intended to emulate the
overall trader population, without the need of making assumptions about
individual market agent strategies. We implement our world agent simulator
models as a Conditional Generative Adversarial Network (CGAN), as well as a
mixture of parametric distributions, and we compare our models against previous
work. Qualitatively and quantitatively, we show that the proposed approaches
consistently outperform previous work, providing more realism and
responsiveness.
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