Projects per year
Abstract
Learning emergent communication is a topic of great interest to the computational linguistics community as it provides a path towards achieving robust, flexible and adaptive language processing in computational systems. Today, computational models of emergent communication are studied through two main methodological paradigms: multi-agent reinforcement learning (MARL) and the language game paradigm. While both paradigms share their main objectives and employ strikingly similar methods, interaction between both communities has so far been surprisingly limited. This can to a large extent be ascribed to the use of different terminologies and experimental designs, which sometimes hinder the detection and interpretation of one another’s results and progress.
In this talk, we aim to remedy this situation by (i) formulating the challenge of re-conceptualising the language game experimental paradigm in the framework of multi-agent reinforcement learning, and (ii) providing both an alignment between their terminologies and a MARL-based reformulation of a canonical language game experiment. Tackling this challenge will enable future language game experiments to benefit from the rapid and promising methodological advances in the MARL community, while it will enable future MARL experiments on learning emergent communication to benefit from the insights and results gained through language game experiments. We strongly believe that this cross-pollination has the potential to lead to major breakthroughs in the modelling of how human-like languages can emerge and evolve in multi-agent systems.
In this talk, we aim to remedy this situation by (i) formulating the challenge of re-conceptualising the language game experimental paradigm in the framework of multi-agent reinforcement learning, and (ii) providing both an alignment between their terminologies and a MARL-based reformulation of a canonical language game experiment. Tackling this challenge will enable future language game experiments to benefit from the rapid and promising methodological advances in the MARL community, while it will enable future MARL experiments on learning emergent communication to benefit from the insights and results gained through language game experiments. We strongly believe that this cross-pollination has the potential to lead to major breakthroughs in the modelling of how human-like languages can emerge and evolve in multi-agent systems.
Original language | English |
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Publication status | Unpublished - 17 Jun 2022 |
Event | Computational Linguistics in The Netherlands 32 - Willem II Stadium, Tilburg, Netherlands Duration: 17 Jun 2022 → 17 Jun 2022 Conference number: 32 https://clin2022.uvt.nl |
Conference
Conference | Computational Linguistics in The Netherlands 32 |
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Abbreviated title | CLIN |
Country/Territory | Netherlands |
City | Tilburg |
Period | 17/06/22 → 17/06/22 |
Internet address |
Fingerprint
Dive into the research topics of 'Investigating emergent communication through language games and multi-agent reinforcement learning'. Together they form a unique fingerprint.Projects
- 2 Finished
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FWOTM1034: Learning Construction Grammars from Semantically Annotated Corpora or Situated Communicative Interactions
Van Eecke, P., Nowe, A. & Beuls, K.
1/10/20 → 30/09/23
Project: Fundamental
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EU629: Meaning and Understanding in Human-centric AI
Beuls, K., Nowe, A. & Van Eecke, P.
1/10/20 → 31/03/25
Project: Fundamental