强化学习
钢筋
财务
经济
心理学
业务
人工智能
计算机科学
社会心理学
作者
Petter N. Kolm,Gordon Ritter
出处
期刊:Social Science Research Network
[Social Science Electronic Publishing]
日期:2019-01-01
被引量:17
摘要
We give an overview and outlook of the field of reinforcement learning as it applies to solving financial applications of intertemporal choice. In finance, common problems of this kind include pricing and hedging of contingent claims, investment and portfolio allocation, buying and selling a portfolio of securities subject to transaction costs, market making, asset liability management and optimization of tax consequences, to name a few. Reinforcement learning allows us to solve these dynamic optimization problems in an almost model-free way, relaxing the assumptions often needed for classical approaches.
A main contribution of this article is the elucidation of the link between these dynamic optimization problem and reinforcement learning, concretely addressing how to formulate expected intertemporal utility maximization problems using modern machine learning techniques.
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