Mathematical Finance Seminar
Date
Time
17:15
Location
TU Berlin
Julian Sester (Singapore)

Distributionally robust Deep Q-Learning and application to portfolio optimization.

We propose a novel distributionally robust Q-learning algorithm for the non-tabular case accounting for continuous state spaces where the state transition of the underlying Markov decision process is subject to model uncertainty. The uncertainty is taken into account by considering the worst-case transition from a ball around a reference probability measure. To determine the optimal policy under the worst-case state transition, we solve the associated non-linear Bellman equation by dualising and regularising the Bellman operator with the Sinkhorn distance, which is then parameterized with deep neural networks. This approach allows us to modify the Deep Q-Network algorithm to optimise for the worst case state transition. We illustrate the tractability and effectiveness of our approach through several applications, including a portfolio optimisation task based on S&P 500 data
(This is joint work with Chung I Lu and Aijia Zhang)