MacroHFT: Memory Augmented Context-aware Reinforcement Learning On High Frequency Trading

Chuqiao Zong, Chaojie Wang, Molei Qin, Lei Feng, Xinrun Wang, Bo An
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Abstract

High-frequency trading (HFT) that executes algorithmic trading in short time scales, has recently occupied the majority of cryptocurrency market. Besides traditional quantitative trading methods, reinforcement learning (RL) has become another appealing approach for HFT due to its terrific ability of handling high-dimensional financial data and solving sophisticated sequential decision-making problems, \emph{e.g.,} hierarchical reinforcement learning (HRL) has shown its promising performance on second-level HFT by training a router to select only one sub-agent from the agent pool to execute the current transaction. However, existing RL methods for HFT still have some defects: 1) standard RL-based trading agents suffer from the overfitting issue, preventing them from making effective policy adjustments based on financial context; 2) due to the rapid changes in market conditions, investment decisions made by an individual agent are usually one-sided and highly biased, which might lead to significant loss in extreme markets. To tackle these problems, we propose a novel Memory Augmented Context-aware Reinforcement learning method On HFT, \emph{a.k.a.} MacroHFT, which consists of two training phases: 1) we first train multiple types of sub-agents with the market data decomposed according to various financial indicators, specifically market trend and volatility, where each agent owns a conditional adapter to adjust its trading policy according to market conditions; 2) then we train a hyper-agent to mix the decisions from these sub-agents and output a consistently profitable meta-policy to handle rapid market fluctuations, equipped with a memory mechanism to enhance the capability of decision-making. Extensive experiments on various cryptocurrency markets demonstrate that MacroHFT can achieve state-of-the-art performance on minute-level trading tasks.
MacroHFT:高频交易中的记忆增强型情境感知强化学习
在短时间内执行算法交易的高频交易(HFT)最近占据了加密货币市场的大部分份额。除了传统的量化交易方法,强化学习(RL)因其在处理高维金融数据和解决复杂的顺序决策问题方面的出色能力而成为另一种吸引人的 HFT 方法,例如,分层强化学习(HRL)通过训练路由器只从代理池中选择一个子代理来执行当前交易,在二级 HFT 上表现出了良好的性能。然而,用于 HFT 的现有 RL 方法仍存在一些缺陷:1)基于 RL 的标准交易代理存在过拟合问题,无法根据金融环境做出有效的策略调整;2)由于市场条件瞬息万变,单个代理做出的投资决策通常具有片面性和高度偏差性,在极端市场中可能导致重大损失。为了解决这些问题,我们提出了一种关于 HFT 的高级记忆增强上下文感知强化学习方法(emph{a.k.a.})。MacroHFT 由两个训练阶段组成:1)我们首先训练多种类型的子代理,市场数据根据各种金融指标(尤其是市场趋势和波动率)进行分解,每个代理都拥有一个条件适配器,可以根据市场条件调整其交易策略;2)然后,我们训练一个超级代理来混合这些子代理的决策,并输出一个持续盈利的元策略来处理快速的市场波动,同时配备一个记忆机制来增强决策能力。在各种加密货币市场上进行的大量实验表明,MacroHFT 可以在分钟级交易任务上实现最先进的性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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