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Home / Proceedings / Proceedings of the AAAI Conference on Artificial Intelligence, 35 / No. 11: AAAI-21 Technical Tracks 11

Solving Common-Payoff Games with Approximate Policy Iteration

February 1, 2023

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Authors

Samuel Sokota

University of Alberta


Edward Lockhart

DeepMind


Finbarr Timbers

DeepMind


Elnaz Davoodi

DeepMind


Ryan D'Orazio

Université de Montréal


Neil Burch

DeepMind


Martin Schmid

DeepMind


Michael Bowling

University of Alberta DeepMind


Marc Lanctot

Deepmind


DOI:

10.1609/aaai.v35i11.17166


Abstract:

For artificially intelligent learning systems to have widespread applicability in real-world settings, it is important that they be able to operate decentrally. Unfortunately, decentralized control is difficult---computing even an epsilon-optimal joint policy is a NEXP complete problem. Nevertheless, a recently rediscovered insight---that a team of agents can coordinate via common knowledge---has given rise to algorithms capable of finding optimal joint policies in small common-payoff games. The Bayesian action decoder (BAD) leverages this insight and deep reinforcement learning to scale to games as large as two-player Hanabi. However, the approximations it uses to do so prevent it from discovering optimal joint policies even in games small enough to brute force optimal solutions. This work proposes CAPI, a novel algorithm which, like BAD, combines common knowledge with deep reinforcement learning. However, unlike BAD, CAPI prioritizes the propensity to discover optimal joint policies over scalability. While this choice precludes CAPI from scaling to games as large as Hanabi, empirical results demonstrate that, on the games to which CAPI does scale, it is capable of discovering optimal joint policies even when other modern multi-agent reinforcement learning algorithms are unable to do so.

Topics: AAAI

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HOW TO CITE:

Samuel Sokota||Edward Lockhart||Finbarr Timbers||Elnaz Davoodi||Ryan D'Orazio||Neil Burch||Martin Schmid||Michael Bowling||Marc Lanctot Solving Common-Payoff Games with Approximate Policy Iteration Proceedings of the AAAI Conference on Artificial Intelligence (2021) 9695-9703.

Samuel Sokota||Edward Lockhart||Finbarr Timbers||Elnaz Davoodi||Ryan D'Orazio||Neil Burch||Martin Schmid||Michael Bowling||Marc Lanctot Solving Common-Payoff Games with Approximate Policy Iteration AAAI 2021, 9695-9703.

Samuel Sokota||Edward Lockhart||Finbarr Timbers||Elnaz Davoodi||Ryan D'Orazio||Neil Burch||Martin Schmid||Michael Bowling||Marc Lanctot (2021). Solving Common-Payoff Games with Approximate Policy Iteration. Proceedings of the AAAI Conference on Artificial Intelligence, 9695-9703.

Samuel Sokota||Edward Lockhart||Finbarr Timbers||Elnaz Davoodi||Ryan D'Orazio||Neil Burch||Martin Schmid||Michael Bowling||Marc Lanctot. Solving Common-Payoff Games with Approximate Policy Iteration. Proceedings of the AAAI Conference on Artificial Intelligence 2021 p.9695-9703.

Samuel Sokota||Edward Lockhart||Finbarr Timbers||Elnaz Davoodi||Ryan D'Orazio||Neil Burch||Martin Schmid||Michael Bowling||Marc Lanctot. 2021. Solving Common-Payoff Games with Approximate Policy Iteration. "Proceedings of the AAAI Conference on Artificial Intelligence". 9695-9703.

Samuel Sokota||Edward Lockhart||Finbarr Timbers||Elnaz Davoodi||Ryan D'Orazio||Neil Burch||Martin Schmid||Michael Bowling||Marc Lanctot. (2021) "Solving Common-Payoff Games with Approximate Policy Iteration", Proceedings of the AAAI Conference on Artificial Intelligence, p.9695-9703

Samuel Sokota||Edward Lockhart||Finbarr Timbers||Elnaz Davoodi||Ryan D'Orazio||Neil Burch||Martin Schmid||Michael Bowling||Marc Lanctot, "Solving Common-Payoff Games with Approximate Policy Iteration", AAAI, p.9695-9703, 2021.

Samuel Sokota||Edward Lockhart||Finbarr Timbers||Elnaz Davoodi||Ryan D'Orazio||Neil Burch||Martin Schmid||Michael Bowling||Marc Lanctot. "Solving Common-Payoff Games with Approximate Policy Iteration". Proceedings of the AAAI Conference on Artificial Intelligence, 2021, p.9695-9703.

Samuel Sokota||Edward Lockhart||Finbarr Timbers||Elnaz Davoodi||Ryan D'Orazio||Neil Burch||Martin Schmid||Michael Bowling||Marc Lanctot. "Solving Common-Payoff Games with Approximate Policy Iteration". Proceedings of the AAAI Conference on Artificial Intelligence, (2021): 9695-9703.

Samuel Sokota||Edward Lockhart||Finbarr Timbers||Elnaz Davoodi||Ryan D'Orazio||Neil Burch||Martin Schmid||Michael Bowling||Marc Lanctot. Solving Common-Payoff Games with Approximate Policy Iteration. AAAI[Internet]. 2021[cited 2023]; 9695-9703.


ISSN: 2374-3468


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