Sciweavers

AI
2001
Springer

Imitation and Reinforcement Learning in Agents with Heterogeneous Actions

13 years 8 months ago
Imitation and Reinforcement Learning in Agents with Heterogeneous Actions
Reinforcement learning techniques are increasingly being used to solve di cult problems in control and combinatorial optimization with promising results. Implicit imitation can accelerate reinforcement learning (RL) by augmenting the Bellman equations with information from the observation of expert agents (mentors). We propose two extensions that permit imitation of agents with heterogeneous actions: feasibility testing, which detects infeasible mentor actions, and k-step repair, which searches for plans that approximate infeasible actions. We demonstrate empirically that both of these extensions allow imitation agents to converge more quickly in the presence of heterogeneous actions.
Bob Price, Craig Boutilier
Added 28 Jul 2010
Updated 28 Jul 2010
Type Conference
Year 2001
Where AI
Authors Bob Price, Craig Boutilier
Comments (0)