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Market Making with Deep Reinforcement Learning from Limit Order Books

Market Making with Deep Reinforcement Learning from Limit Order Books

来源:Arxiv_logoArxiv
英文摘要

Market making (MM) is an important research topic in quantitative finance, the agent needs to continuously optimize ask and bid quotes to provide liquidity and make profits. The limit order book (LOB) contains information on all active limit orders, which is an essential basis for decision-making. The modeling of evolving, high-dimensional and low signal-to-noise ratio LOB data is a critical challenge. Traditional MM strategy relied on strong assumptions such as price process, order arrival process, etc. Previous reinforcement learning (RL) works handcrafted market features, which is insufficient to represent the market. This paper proposes a RL agent for market making with LOB data. We leverage a neural network with convolutional filters and attention mechanism (Attn-LOB) for feature extraction from LOB. We design a new continuous action space and a hybrid reward function for the MM task. Finally, we conduct comprehensive experiments on latency and interpretability, showing that our agent has good applicability.

Jianwu Lin、Fanlin Huang、Hong Guo

财政、金融计算技术、计算机技术

Jianwu Lin,Fanlin Huang,Hong Guo.Market Making with Deep Reinforcement Learning from Limit Order Books[EB/OL].(2023-05-25)[2025-07-21].https://arxiv.org/abs/2305.15821.点此复制

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