PMLGMLSep 16, 2020

Time your hedge with Deep Reinforcement Learning

arXiv:2009.14136v216 citations
AI Analysis

This work addresses the challenge for asset managers in planning hedging strategies under market conditions, representing an incremental improvement by enhancing existing DRL methods with contextual information and robustness testing.

The paper tackled the problem of optimal timing for hedging strategies in asset management by developing an augmented deep reinforcement learning framework that dynamically links market conditions to hedging decisions, achieving superior returns and lower risk compared to standard approaches.

Can an asset manager plan the optimal timing for her/his hedging strategies given market conditions? The standard approach based on Markowitz or other more or less sophisticated financial rules aims to find the best portfolio allocation thanks to forecasted expected returns and risk but fails to fully relate market conditions to hedging strategies decision. In contrast, Deep Reinforcement Learning (DRL) can tackle this challenge by creating a dynamic dependency between market information and hedging strategies allocation decisions. In this paper, we present a realistic and augmented DRL framework that: (i) uses additional contextual information to decide an action, (ii) has a one period lag between observations and actions to account for one day lag turnover of common asset managers to rebalance their hedge, (iii) is fully tested in terms of stability and robustness thanks to a repetitive train test method called anchored walk forward training, similar in spirit to k fold cross validation for time series and (iv) allows managing leverage of our hedging strategy. Our experiment for an augmented asset manager interested in sizing and timing his hedges shows that our approach achieves superior returns and lower risk.

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