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Simplified Action Decoder for Deep Multi-Agent Reinforcement Learning - 2019

Simplified Action Decoder for Deep Multi-Agent Reinforcement Learning

Research paper on Simplified Action Decoder for Deep Multi-Agent Reinforcement Learning

Research Area:  Machine Learning

Abstract:

n recent years we have seen fast progress on a number of benchmark problems in AI, with modern methods achieving near or super human performance in Go, Poker and Dota. One common aspect of all of these challenges is that they are by design adversarial or, technically speaking, zero-sum. In contrast to these settings, success in the real world commonly requires humans to collaborate and communicate with others, in settings that are, at least partially, cooperative. In the last year, the card game Hanabi has been established as a new benchmark environment for AI to fill this gap. In particular, Hanabi is interesting to humans since it is entirely focused on theory of mind, i.e., the ability to effectively reason over the intentions, beliefs and point of view of other agents when observing their actions. Learning to be informative when observed by others is an interesting challenge for Reinforcement Learning (RL): Fundamentally, RL requires agents to explore in order to discover good policies. However, when done naively, this randomness will inherently make their actions less informative to others during training. We present a new deep multi-agent RL method, the Simplified Action Decoder (SAD), which resolves this contradiction exploiting the centralized training phase. During training SAD allows other agents to not only observe the (exploratory) action chosen, but agents instead also observe the greedy action of their team mates. By combining this simple intuition with best practices for multi-agent learning, SAD establishes a new SOTA for learning methods for 2-5 players on the self-play part of the Hanabi challenge. Our ablations show the contributions of SAD compared with the best practice components.

Keywords:  
Deep Multi-Agent Reinforcement Learning
Multi-Agent
Reinforcement Learning
Simplified Action Decoder
AI
Machine Learning

Author(s) Name:  Hengyuan Hu, Jakob N Foerster

Journal name:  Artificial Intelligence

Conferrence name:  

Publisher name:  arXiv:1912.02288

DOI:  10.48550/arXiv.1912.02288

Volume Information: