Review: the application of deep reinforcement learning to quantitative trading in financial market

As an effective learning paradigm to realize general artificial intelligence, deep reinforcement learning (DRL) has achieved significant results in a series of practical quantitative trading applications in financial market, becoming the mainstream method in this field. Firstly, a detailed introduct...

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Main Authors: XU Bo, HE Yijun, WEN Jiancheng, LI Xiangxia
Format: Article
Language:zho
Published: POSTS&TELECOM PRESS Co., LTD 2024-12-01
Series:智能科学与技术学报
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Online Access:http://www.cjist.com.cn/zh/article/doi/10.11959/j.issn.2096-6652.202439/
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author XU Bo
HE Yijun
WEN Jiancheng
LI Xiangxia
author_facet XU Bo
HE Yijun
WEN Jiancheng
LI Xiangxia
author_sort XU Bo
collection DOAJ
description As an effective learning paradigm to realize general artificial intelligence, deep reinforcement learning (DRL) has achieved significant results in a series of practical quantitative trading applications in financial market, becoming the mainstream method in this field. Firstly, a detailed introduction to the basic concepts and principles of deep reinforcement learning were provided. On this basis, a systematic review was conducted on the application and practical progress of DRL in quantitative trading in financial market, covering the application of different types of DRL, such as policy-based algorithm models, value-based algorithm models, and actor-critic algorithm models in quantitative trading in financial market. The advantages of DRL in quantitative trading in financial market were further explored, pointing out DRL could adjust trading strategies based on dynamic changes in the market environments to adapt to different market environments. Secondly, the challenges faced by DRL in quantitative trading in financial market were pointed out, including data quality issues, model stability issues, overfitting issues, etc. Finally, we outlooked the future development trend of DRL in the field of quantitative trading in financial market. It is believed that with the continuous optimization of algorithms and the improvement of computing power, DRL will play a more important role in the field of quantitative trading in financial market, providing more accurate and reliable support for investment decisions.
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spelling doaj-art-447e6a3fa303447c8e26caf972fa61982025-01-25T19:00:50ZzhoPOSTS&TELECOM PRESS Co., LTD智能科学与技术学报2096-66522024-12-01641642881046388Review: the application of deep reinforcement learning to quantitative trading in financial marketXU BoHE YijunWEN JianchengLI XiangxiaAs an effective learning paradigm to realize general artificial intelligence, deep reinforcement learning (DRL) has achieved significant results in a series of practical quantitative trading applications in financial market, becoming the mainstream method in this field. Firstly, a detailed introduction to the basic concepts and principles of deep reinforcement learning were provided. On this basis, a systematic review was conducted on the application and practical progress of DRL in quantitative trading in financial market, covering the application of different types of DRL, such as policy-based algorithm models, value-based algorithm models, and actor-critic algorithm models in quantitative trading in financial market. The advantages of DRL in quantitative trading in financial market were further explored, pointing out DRL could adjust trading strategies based on dynamic changes in the market environments to adapt to different market environments. Secondly, the challenges faced by DRL in quantitative trading in financial market were pointed out, including data quality issues, model stability issues, overfitting issues, etc. Finally, we outlooked the future development trend of DRL in the field of quantitative trading in financial market. It is believed that with the continuous optimization of algorithms and the improvement of computing power, DRL will play a more important role in the field of quantitative trading in financial market, providing more accurate and reliable support for investment decisions.http://www.cjist.com.cn/zh/article/doi/10.11959/j.issn.2096-6652.202439/financial marketquantitative tradingdeep reinforcement learning
spellingShingle XU Bo
HE Yijun
WEN Jiancheng
LI Xiangxia
Review: the application of deep reinforcement learning to quantitative trading in financial market
智能科学与技术学报
financial market
quantitative trading
deep reinforcement learning
title Review: the application of deep reinforcement learning to quantitative trading in financial market
title_full Review: the application of deep reinforcement learning to quantitative trading in financial market
title_fullStr Review: the application of deep reinforcement learning to quantitative trading in financial market
title_full_unstemmed Review: the application of deep reinforcement learning to quantitative trading in financial market
title_short Review: the application of deep reinforcement learning to quantitative trading in financial market
title_sort review the application of deep reinforcement learning to quantitative trading in financial market
topic financial market
quantitative trading
deep reinforcement learning
url http://www.cjist.com.cn/zh/article/doi/10.11959/j.issn.2096-6652.202439/
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AT heyijun reviewtheapplicationofdeepreinforcementlearningtoquantitativetradinginfinancialmarket
AT wenjiancheng reviewtheapplicationofdeepreinforcementlearningtoquantitativetradinginfinancialmarket
AT lixiangxia reviewtheapplicationofdeepreinforcementlearningtoquantitativetradinginfinancialmarket