MFLGCPTRDec 8, 2021

Recent Advances in Reinforcement Learning in Finance

arXiv:2112.04553v4278 citations
AI Analysis

It addresses financial decision-making problems for practitioners and researchers, but is incremental as it synthesizes existing RL methods without introducing new techniques.

This survey paper reviews recent developments in reinforcement learning (RL) for finance, highlighting its ability to leverage large financial data with fewer model assumptions to improve decision-making in complex environments like optimal execution and portfolio optimization.

The rapid changes in the finance industry due to the increasing amount of data have revolutionized the techniques on data processing and data analysis and brought new theoretical and computational challenges. In contrast to classical stochastic control theory and other analytical approaches for solving financial decision-making problems that heavily reply on model assumptions, new developments from reinforcement learning (RL) are able to make full use of the large amount of financial data with fewer model assumptions and to improve decisions in complex financial environments. This survey paper aims to review the recent developments and use of RL approaches in finance. We give an introduction to Markov decision processes, which is the setting for many of the commonly used RL approaches. Various algorithms are then introduced with a focus on value and policy based methods that do not require any model assumptions. Connections are made with neural networks to extend the framework to encompass deep RL algorithms. Our survey concludes by discussing the application of these RL algorithms in a variety of decision-making problems in finance, including optimal execution, portfolio optimization, option pricing and hedging, market making, smart order routing, and robo-advising.

Foundations

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