The paper proposes a multi-agent and self-adaptive framework, called MASA, to address the limitations of single-agent deep reinforcement learning (RL) approaches in portfolio management. The key aspects of the MASA framework are:
It employs two cooperating agents - an RL-based agent and a solver-based agent. The RL-based agent uses the TD3 algorithm to optimize the overall portfolio returns, while the solver-based agent adjusts the portfolio to minimize potential risks.
It integrates a market observer agent that provides estimated market trends as additional feedback to help the RL-based and solver-based agents quickly adapt to changing market conditions.
The multi-agent RL scheme of MASA aims to achieve a better balance between portfolio returns and risks compared to single-agent RL approaches, especially in highly volatile financial markets.
The MASA framework adopts a loosely-coupled and pipelining computational model, making it more resilient and reliable as the overall framework can continue to work even if any individual agent fails.
The paper evaluates the MASA framework on challenging datasets of the CSI 300, Dow Jones Industrial Average, and S&P 500 indexes over the past 10 years. The results demonstrate the potential strengths of the MASA framework in balancing portfolio returns and risks compared to various well-known RL-based approaches.
Til et andet sprog
fra kildeindhold
arxiv.org
Vigtigste indsigter udtrukket fra
by Zhenglong Li... kl. arxiv.org 09-11-2024
https://arxiv.org/pdf/2402.00515.pdfDybere Forespørgsler