Scalable Semantic Non-Markovian Simulation Proxy for Reinforcement Learning [In Press]

Pyreason-Gym Simulator

Abstract

Recent advances in reinforcement learning (RL) have shown much promise across a variety of applications. However, issues such as scalability, explainability, and Markovian assumptions limit its applicability in certain domains. We observe that many of these shortcomings emanate from the simulator as opposed to the RL training algorithms themselves. As such, we propose a semantic proxy for simulation based on a temporal extension to annotated logic. In comparison with two high-fidelity simulators, we show up to three orders of magnitude speed-up while preserving the quality of learned policy. In addition, we show the ability to model and leverage non-Markovian dynamics and instantaneous actions while providing an explainable trace describing the outcomes of the agent actions.

Publication
International Conference on Semantic Computing
Devendra R. Parkar
Devendra R. Parkar
Research Assistant

My broad research interests include complex systems, human cognition modeling and learning theory