Optimizing Deep Reinforcement Learning for American Put Option Hedging
Reilly Pickard, F. Wredenhagen, and Y. Lawryshyn

TL;DR
This paper explores how hyperparameter tuning and retraining strategies improve Deep Reinforcement Learning-based hedging of American put options, demonstrating superior performance over traditional methods at realistic transaction costs.
Contribution
It introduces a novel weekly retraining approach for DRL agents using market data, enhancing hedging performance over static training methods.
Findings
Moderate hyperparameters yield optimal hedging performance.
Quadratic transaction cost penalties outperform linear ones.
Weekly retraining improves DRL agent effectiveness.
Abstract
This paper contributes to the existing literature on hedging American options with Deep Reinforcement Learning (DRL). The study first investigates hyperparameter impact on hedging performance, considering learning rates, training episodes, neural network architectures, training steps, and transaction cost penalty functions. Results highlight the importance of avoiding certain combinations, such as high learning rates with a high number of training episodes or low learning rates with few training episodes and emphasize the significance of utilizing moderate values for optimal outcomes. Additionally, the paper warns against excessive training steps to prevent instability and demonstrates the superiority of a quadratic transaction cost penalty function over a linear version. This study then expands upon the work of Pickard et al. (2024), who utilize a Chebyshev interpolation option pricing…
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Taxonomy
TopicsStochastic processes and financial applications
Methods7 Fastest Ways to Call American Airlines Reservations Number (USA Guide)
