Abstract
We use simulated soccer to study multiagent learning. Each team's players
(agents) share action set and policy, but may behave differently due to
position-dependent inputs. All agents making up a team are rewarded or
punished collectively in case of goals. We conduct simulations with
varying team sizes, and
... read more