MAAILGJul 14, 2017

Lenient Multi-Agent Deep Reinforcement Learning

arXiv:1707.04402v2166 citations
Originality Incremental advance
AI Analysis

This addresses the problem of efficient cooperation in multi-agent systems for researchers, but it is incremental as it adapts an existing leniency concept to a deep learning context.

The paper tackled the challenge of outdated transitions in multi-agent deep reinforcement learning (MA-DRL) by applying leniency to control negative policy updates, finding that Lenient-DQN agents were more likely to converge to the optimal policy in a stochastic reward environment compared to related methods.

Much of the success of single agent deep reinforcement learning (DRL) in recent years can be attributed to the use of experience replay memories (ERM), which allow Deep Q-Networks (DQNs) to be trained efficiently through sampling stored state transitions. However, care is required when using ERMs for multi-agent deep reinforcement learning (MA-DRL), as stored transitions can become outdated because agents update their policies in parallel [11]. In this work we apply leniency [23] to MA-DRL. Lenient agents map state-action pairs to decaying temperature values that control the amount of leniency applied towards negative policy updates that are sampled from the ERM. This introduces optimism in the value-function update, and has been shown to facilitate cooperation in tabular fully-cooperative multi-agent reinforcement learning problems. We evaluate our Lenient-DQN (LDQN) empirically against the related Hysteretic-DQN (HDQN) algorithm [22] as well as a modified version we call scheduled-HDQN, that uses average reward learning near terminal states. Evaluations take place in extended variations of the Coordinated Multi-Agent Object Transportation Problem (CMOTP) [8] which include fully-cooperative sub-tasks and stochastic rewards. We find that LDQN agents are more likely to converge to the optimal policy in a stochastic reward CMOTP compared to standard and scheduled-HDQN agents.

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