Probabilistic Inference Techniques for Scalable Multiagent Decision Making
Decentralized POMDPs provide an expressive framework for multiagent sequential decision making. However, the complexity of these models---NEXP-Complete even for two agents---has limited their scalability. We present a promising new class of approximation algorithms by developing novel connections be...
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sg-smu-ink.sis_research-40762018-06-26T00:21:36Z Probabilistic Inference Techniques for Scalable Multiagent Decision Making Akshat KUMAR, ZILBERSTEIN, Shlomo TOUSSAINT, Marc Decentralized POMDPs provide an expressive framework for multiagent sequential decision making. However, the complexity of these models---NEXP-Complete even for two agents---has limited their scalability. We present a promising new class of approximation algorithms by developing novel connections between multiagent planning and machine learning. We show how the multiagent planning problem can be reformulated as inference in a mixture of dynamic Bayesian networks (DBNs). This planning-as-inference approach paves the way for the application of efficient inference techniques in DBNs to multiagent decision making. To further improve scalability, we identify certain conditions that are sufficient to extend the approach to multiagent systems with dozens of agents. Specifically, we show that the necessary inference within the expectation-maximization framework can be decomposed into processes that often involve a small subset of agents, thereby facilitating scalability. We further show that a number of existing multiagent planning models satisfy these conditions. Experiments on large planning benchmarks confirm the benefits of our approach in terms of runtime and scalability with respect to existing techniques. 2015-06-01T07:00:00Z text application/pdf https://ink.library.smu.edu.sg/sis_research/3076 info:doi/10.1613/jair.4649 https://ink.library.smu.edu.sg/context/sis_research/article/4076/viewcontent/10944_Article_Text_20419_1_10_20180216.pdf http://creativecommons.org/licenses/by-nc-nd/4.0/ Research Collection School Of Computing and Information Systems eng Institutional Knowledge at Singapore Management University Artificial Intelligence and Robotics Computer Sciences |
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Artificial Intelligence and Robotics Computer Sciences Akshat KUMAR, ZILBERSTEIN, Shlomo TOUSSAINT, Marc Probabilistic Inference Techniques for Scalable Multiagent Decision Making |
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Decentralized POMDPs provide an expressive framework for multiagent sequential decision making. However, the complexity of these models---NEXP-Complete even for two agents---has limited their scalability. We present a promising new class of approximation algorithms by developing novel connections between multiagent planning and machine learning. We show how the multiagent planning problem can be reformulated as inference in a mixture of dynamic Bayesian networks (DBNs). This planning-as-inference approach paves the way for the application of efficient inference techniques in DBNs to multiagent decision making. To further improve scalability, we identify certain conditions that are sufficient to extend the approach to multiagent systems with dozens of agents. Specifically, we show that the necessary inference within the expectation-maximization framework can be decomposed into processes that often involve a small subset of agents, thereby facilitating scalability. We further show that a number of existing multiagent planning models satisfy these conditions. Experiments on large planning benchmarks confirm the benefits of our approach in terms of runtime and scalability with respect to existing techniques. |
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author |
Akshat KUMAR, ZILBERSTEIN, Shlomo TOUSSAINT, Marc |
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Akshat KUMAR, ZILBERSTEIN, Shlomo TOUSSAINT, Marc |
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Akshat KUMAR, |
title |
Probabilistic Inference Techniques for Scalable Multiagent Decision Making |
title_short |
Probabilistic Inference Techniques for Scalable Multiagent Decision Making |
title_full |
Probabilistic Inference Techniques for Scalable Multiagent Decision Making |
title_fullStr |
Probabilistic Inference Techniques for Scalable Multiagent Decision Making |
title_full_unstemmed |
Probabilistic Inference Techniques for Scalable Multiagent Decision Making |
title_sort |
probabilistic inference techniques for scalable multiagent decision making |
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Institutional Knowledge at Singapore Management University |
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2015 |
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https://ink.library.smu.edu.sg/sis_research/3076 https://ink.library.smu.edu.sg/context/sis_research/article/4076/viewcontent/10944_Article_Text_20419_1_10_20180216.pdf |
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