The practical application of learning agents requires sample efficient and interpretable algorithms. Learning from behavioral priors is a promising way to bootstrap agents with a better-than-random exploration policy or a safe-guard against the pitfalls of early learning. Existing solutions for imitation learning require a large number of expert demonstrations and rely on hard-to-interpret learning methods like Deep Q-learning. In this work we present a planning-based approach that can use these behavioral priors for effective exploration and learning in a reinforcement learning environment, and we demonstrate that curated exploration policies in the form of behavioral priors can help an agent learn faster.
@article{arxiv.2207.01845,
title = {Planning with RL and episodic-memory behavioral priors},
author = {Shivansh Beohar and Andrew Melnik},
journal= {arXiv preprint arXiv:2207.01845},
year = {2022}
}