Maximum Entropy Gain Exploration for Long Horizon Multi-goal Reinforcement Learning

Silviu Pitis, Harris Chan, Stephen Zhao, Bradly Stadie, Jimmy Ba

Research output: Contribution to conferencePaperpeer-review

21 Scopus citations

Abstract

What goals should a multi-goal reinforcement learning agent pursue during training in long-horizon tasks? When the desired (test time) goal distribution is too distant to offer a useful learning signal, we argue that the agent should not pursue unobtainable goals. Instead, it should set its own intrinsic goals that maximize the entropy of the historical achieved goal distribution. We propose to optimize this objective by having the agent pursue past achieved goals in sparsely explored areas of the goal space, which focuses exploration on the frontier of the achievable goal set. We show that our strategy achieves an order of magnitude better sample efficiency than the prior state of the art on long-horizon multi-goal tasks including maze navigation and block stacking.

Original languageEnglish (US)
StatePublished - 2020
EventAdaptive and Learning Agents Workshop, ALA 2020 at AAMAS 2020 - Auckland, New Zealand
Duration: May 9 2020May 10 2020

Conference

ConferenceAdaptive and Learning Agents Workshop, ALA 2020 at AAMAS 2020
Country/TerritoryNew Zealand
CityAuckland
Period5/9/205/10/20

Keywords

  • Curiosity-based Exploration
  • Empowerment
  • Long-horizon problem
  • Multi-goal reinforcement learning

ASJC Scopus subject areas

  • Artificial Intelligence
  • Software

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