Using Deep Reinforcement Learning with Hierarchical Risk Parity for Portfolio Optimization

Author:

Millea Adrian,Edalat Abbas

Abstract

We devise a hierarchical decision-making architecture for portfolio optimization on multiple markets. At the highest level a Deep Reinforcement Learning (DRL) agent selects among a number of discrete actions, representing low-level agents. For the low-level agents, we use a set of Hierarchical Risk Parity (HRP) and Hierarchical Equal Risk Contribution (HERC) models with different hyperparameters, which all run in parallel, off-market (in a simulation). The information on which the DRL agent decides which of the low-level agents should act next is constituted by the stacking of the recent performances of all agents. Thus, the modelling resembles a statefull, non-stationary, multi-arm bandit, where the performance of the individual arms changes with time and is assumed to be dependent on the recent history. We perform experiments on the cryptocurrency market (117 assets), on the stock market (46 assets) and on the foreign exchange market (28 pairs) showing the excellent robustness and performance of the overall system. Moreover, we eliminate the need for retraining and are able to deal with large testing sets successfully.

Funder

Engineering and Physical Sciences Research Council

Publisher

MDPI AG

Subject

Finance

Reference36 articles.

1. Deep reinforcement learning for portfolio management of markets with a dynamic number of assets;Betancourt;Expert Systems with Applications,2021

2. Global portfolio optimization;Black;Financial Analysts Journal,1992

3. Bayesian estimation of the global minimum variance portfolio;Bodnar;European Journal of Operational Research,2017

4. Beyond risk parity—A machine learning-based hierarchical risk parity approach on cryptocurrencies;Burggraf;Finance Research Letters,2021

5. Toward maximum diversification;Choueifaty;The Journal of Portfolio Management,2008

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