SOTAVerified

On the convergence of cycle detection for navigational reinforcement learning

2015-11-27Unverified0· sign in to hype

Tom J. Ameloot, Jan Van den Bussche

Unverified — Be the first to reproduce this paper.

Reproduce

Abstract

We consider a reinforcement learning framework where agents have to navigate from start states to goal states. We prove convergence of a cycle-detection learning algorithm on a class of tasks that we call reducible. Reducible tasks have an acyclic solution. We also syntactically characterize the form of the final policy. This characterization can be used to precisely detect the convergence point in a simulation. Our result demonstrates that even simple algorithms can be successful in learning a large class of nontrivial tasks. In addition, our framework is elementary in the sense that we only use basic concepts to formally prove convergence.

Tasks

Reproductions