MASep 19, 2023
Multicopy Reinforcement Learning AgentsAlicia P. Wolfe, Oliver Diamond, Brigitte Goeler-Slough et al.
This paper examines a novel type of multi-agent problem, in which an agent makes multiple identical copies of itself in order to achieve a single agent task better or more efficiently. This strategy improves performance if the environment is noisy and the task is sometimes unachievable by a single agent copy. We propose a learning algorithm for this multicopy problem which takes advantage of the structure of the value function to efficiently learn how to balance the advantages and costs of adding additional copies.