An Introduction to Reinforcement Learning and Reward Machines.

In Reinforcement Learning (RL), an agent is guided by the rewards it receives from the reward function. Unfortunately, it may take many interactions with the environment to learn from sparse rewards, and it can be challenging to specify reward functions that reflect complex reward-worthy behavior. We propose using reward machines (RMs), which are automata-based representations that expose reward function structure, as a normal form representation for reward functions. We show how specifications of reward in various formal languages, including LTL and other regular languages, can be automatically translated into RMs, easing the burden of complex reward function specification. We then show how the exposed structure of the reward function can be exploited by tailored q-learning algorithms and automated reward shaping techniques in order to improve the sample efficiency of reinforcement learning methods. Experiments show that these RM-tailored techniques significantly outperform state-of-the-art (deep) RL algorithms, solving problems that otherwise cannot reasonably be solved by existing approaches.

Date: Jan 07, 2020 at 15:45:00 h
Venue: Beauchef 851, Torre Norte, Piso 7, Sala de Seminarios Jacques L. Lions
Speaker: Rodrigo Toro
Affiliation: University of Toronto, Canadá
Coordinator: Prof. Felipe Tobar
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Posted on Jan 6, 2020 in Seminario Aprendizaje de Máquinas, Seminars