基于强化学习的衍生品套期保值研究综述

SSRN Pub Date : 2023-03-14 DOI:10.2139/ssrn.4217989
Peng Liu
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引用次数: 0

摘要

套期保值是一种常见的交易活动,用于管理涉及期权等衍生品交易的风险。然而,在具有成本的离散时间交易的真实市场中,完美和及时的对冲是一项不可能完成的任务。近年来,强化学习(RL)在制定最优对冲策略方面得到了广泛应用。具体而言,不同的强化学习算法已被应用于根据市场条件学习最佳对冲头寸,提供自动风险管理解决方案,在满足市场动态和限制的同时提出最佳对冲策略。在这篇文章中,作者提供了在套期保值衍生品中使用RL技术的全面回顾。在强调研究主流的同时,作者还提出了这一令人兴奋的新兴领域的潜在研究方向。
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A Review on Derivative Hedging Using Reinforcement Learning
Hedging is a common trading activity to manage the risk of engaging in transactions that involve derivatives such as options. Perfect and timely hedging, however, is an impossible task in the real market that characterizes discrete-time transactions with costs. Recent years have witnessed reinforcement learning (RL) in formulating optimal hedging strategies. Specifically, different RL algorithms have been applied to learn the optimal offsetting position based on market conditions, offering an automatic risk management solution that proposes optimal hedging strategies while catering to both market dynamics and restrictions. In this article, the author provides a comprehensive review of the use of RL techniques in hedging derivatives. In addition to highlighting the main streams of research, the author provides potential research directions on this exciting and emerging field.
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