IMM: An Imitative Reinforcement Learning Approach with Predictive Representation Learning for Automatic Market Making
Hui Niu, Siyuan Li, Jiahao Zheng, Zhouchi Lin, Jian Li, Jian Guo, Bo, An

TL;DR
This paper introduces IMM, a novel reinforcement learning framework for market making that combines imitation learning and predictive representation to develop effective multi-price level strategies, outperforming existing methods.
Contribution
IMM is the first RL-based market making approach that effectively integrates expert signals and predictive representations for multi-price level strategies.
Findings
IMM outperforms current RL-based strategies on real-world datasets.
The representation learning unit captures market trends effectively.
Ablation studies confirm the importance of each component.
Abstract
Market making (MM) has attracted significant attention in financial trading owing to its essential function in ensuring market liquidity. With strong capabilities in sequential decision-making, Reinforcement Learning (RL) technology has achieved remarkable success in quantitative trading. Nonetheless, most existing RL-based MM methods focus on optimizing single-price level strategies which fail at frequent order cancellations and loss of queue priority. Strategies involving multiple price levels align better with actual trading scenarios. However, given the complexity that multi-price level strategies involves a comprehensive trading action space, the challenge of effectively training profitable RL agents for MM persists. Inspired by the efficient workflow of professional human market makers, we propose Imitative Market Maker (IMM), a novel RL framework leveraging both knowledge from…
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Taxonomy
TopicsStock Market Forecasting Methods · Financial Markets and Investment Strategies · Complex Systems and Time Series Analysis
Methodsfail · ALIGN · Focus
