Robust Reinforcement Learning in Finance: Modeling Market Impact with Elliptic Uncertainty Sets

Neural Information Processing Systems 

In financial applications, reinforcement learning (RL) agents are commonly trained on historical data, where their actions do not influence prices. However, during deployment, these agents trade in live markets where their own transactions can shift asset prices, a phenomenon known as market impact.