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Autori principali: Meulemans, Alexander, Kobayashi, Seijin, von Oswald, Johannes, Scherrer, Nino, Elmoznino, Eric, Richards, Blake, Lajoie, Guillaume, Arcas, Blaise Agüera y, Sacramento, João
Natura: Preprint
Pubblicazione: 2024
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Accesso online:https://arxiv.org/abs/2410.18636
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author Meulemans, Alexander
Kobayashi, Seijin
von Oswald, Johannes
Scherrer, Nino
Elmoznino, Eric
Richards, Blake
Lajoie, Guillaume
Arcas, Blaise Agüera y
Sacramento, João
author_facet Meulemans, Alexander
Kobayashi, Seijin
von Oswald, Johannes
Scherrer, Nino
Elmoznino, Eric
Richards, Blake
Lajoie, Guillaume
Arcas, Blaise Agüera y
Sacramento, João
contents Self-interested individuals often fail to cooperate, posing a fundamental challenge for multi-agent learning. How can we achieve cooperation among self-interested, independent learning agents? Promising recent work has shown that in certain tasks cooperation can be established between learning-aware agents who model the learning dynamics of each other. Here, we present the first unbiased, higher-derivative-free policy gradient algorithm for learning-aware reinforcement learning, which takes into account that other agents are themselves learning through trial and error based on multiple noisy trials. We then leverage efficient sequence models to condition behavior on long observation histories that contain traces of the learning dynamics of other agents. Training long-context policies with our algorithm leads to cooperative behavior and high returns on standard social dilemmas, including a challenging environment where temporally-extended action coordination is required. Finally, we derive from the iterated prisoner's dilemma a novel explanation for how and when cooperation arises among self-interested learning-aware agents.
format Preprint
id arxiv_https___arxiv_org_abs_2410_18636
institution arXiv
publishDate 2024
record_format arxiv
spellingShingle Multi-agent cooperation through learning-aware policy gradients
Meulemans, Alexander
Kobayashi, Seijin
von Oswald, Johannes
Scherrer, Nino
Elmoznino, Eric
Richards, Blake
Lajoie, Guillaume
Arcas, Blaise Agüera y
Sacramento, João
Artificial Intelligence
Self-interested individuals often fail to cooperate, posing a fundamental challenge for multi-agent learning. How can we achieve cooperation among self-interested, independent learning agents? Promising recent work has shown that in certain tasks cooperation can be established between learning-aware agents who model the learning dynamics of each other. Here, we present the first unbiased, higher-derivative-free policy gradient algorithm for learning-aware reinforcement learning, which takes into account that other agents are themselves learning through trial and error based on multiple noisy trials. We then leverage efficient sequence models to condition behavior on long observation histories that contain traces of the learning dynamics of other agents. Training long-context policies with our algorithm leads to cooperative behavior and high returns on standard social dilemmas, including a challenging environment where temporally-extended action coordination is required. Finally, we derive from the iterated prisoner's dilemma a novel explanation for how and when cooperation arises among self-interested learning-aware agents.
title Multi-agent cooperation through learning-aware policy gradients
topic Artificial Intelligence
url https://arxiv.org/abs/2410.18636