Abstract

This paper considers cooperative Multi-Agent Reinforcement Learning, focusing on emergent communication in settings where multiple pairs of independent learners interact at varying frequencies. In this context, multiple distinct and incompatible languages can emerge. When an agent encounters a speaker of an alternative language, there is a requirement for a period of adaptation before they can efficiently converse. This adaptation results in the emergence of a new language and the forgetting of the previous language. In principle, this is an example of the Catastrophic Forgetting problem which can be mitigated by enabling the agents to learn and maintain multiple languages. We take inspiration from the Continual Learning literature and equip our agents with multi-headed neural networks which enable our agents to be multi-lingual. Our method is empirically validated within a referential MNIST based communication game and is shown to be able to maintain multiple languages where existing approaches cannot.
Original languageEnglish
Number of pages9
Publication statusUnpublished - 14 Dec 2021
EventConference on Neural Information Processing Systems - Virtual-only
Duration: 6 Dec 202114 Dec 2021
Conference number: 35
https://neurips.cc/virtual/2021

Conference

ConferenceConference on Neural Information Processing Systems
Abbreviated titleNeurIPS 2021
Period6/12/2114/12/21
Internet address

Keywords

  • cs.AI
  • cs.MA

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