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强化学习在资产与投资组合管理中的应用

Reinforcement Learning for Asset and Portfolio Management

The Journal of Portfolio Management · 2025
被引 0
人大 BABS 3

中文导读

教育性地概述了强化学习在资产与投资组合管理中的应用,包括交易、对冲、投资组合分配和投资者偏好推断,并讨论了其潜力、挑战及实践建议。

Abstract

This article provides an educational overview of reinforcement learning (RL) and its applications to asset and portfolio management. RL differs from classical optimization by focusing on policies that adapt over time, making it well suited for problems with sequential decisions, frictions, and feedback effects. The authors review applications in trading, hedging, portfolio allocation, and investor preference inference, highlighting both the potential and the challenges of RL. The discussion emphasizes not only where RL has delivered proof-of-concept results but also what portfolio managers and traders should take away for practice. They conclude with practitioner recommendations and an outlook on future directions—including hybrid approaches that combine RL with classical models—the role of richer data and simulators, and the prospects for continual learning in finance.

强化学习投资组合管理资产管理金融科技