Coordination-driven Learning In Multi-agent Problem Spaces
2018 Β· Sean L. Barton, Nicholas R. Waytowich, Derrik E. Asher
Abstract
We discuss the role of coordination as a direct learning objective in multi-agent reinforcement learning (MARL) domains. To this end, we present a novel means of quantifying coordination in multi-agent systems, and discuss the implications of using such a measure to optimize coordinated agent policies. This concept has important implications for adversary-aware RL, which we take to be a sub-domain of multi-agent learning.
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