Transfer of Value Functions via Variational Methods
Tirinzoni, Andrea, Sanchez, Rafael Rodriguez, Restelli, Marcello
–Neural Information Processing Systems
We consider the problem of transferring value functions in reinforcement learning. We propose an approach that uses the given source tasks to learn a prior distribution over optimal value functions and provide to an efficient variational approximation of the corresponding posterior in a new target task. We show our approach to be general, in the sense that it can be combined with complex parametric function approximators and distribution models, while providing two practical algorithms based on Gaussians and Gaussian mixtures. We theoretically analyze them by deriving a finite-sample analysis and provide a comprehensive empirical evaluation in four different domains.
Neural Information Processing Systems
Dec-31-2018