Message Passing for Collective Graphical Models
Collective graphical models (CGMs) are a formalism for inference and learning about a population of independent and identically distributed individuals when only noisy aggregate data are available. We highlight a close connection between approximate MAP inference in CGMs and marginal inference in st...
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sg-smu-ink.sis_research-39142020-03-24T08:14:17Z Message Passing for Collective Graphical Models SUN, Tao SHELDON, Daniel KUMAR, Akshat Collective graphical models (CGMs) are a formalism for inference and learning about a population of independent and identically distributed individuals when only noisy aggregate data are available. We highlight a close connection between approximate MAP inference in CGMs and marginal inference in standard graphical models. The connection leads us to derive a novel Belief Propagation (BP) style algorithm for collective graphical models. Mathematically, the algorithm is a strict generalization of BP—it can be viewed as an extension to minimize the Bethe free energy plus additional energy terms that are non-linear functions of the marginals. For CGMs, the algorithm is much more efficient than previous approaches to inference. We demonstrate its performance on two synthetic experiments concerning bird migration and collective human mobility. 2015-07-01T07:00:00Z text application/pdf https://ink.library.smu.edu.sg/sis_research/2914 https://ink.library.smu.edu.sg/context/sis_research/article/3914/viewcontent/MessagePassingCollectiveGraphicalModels_2015_ICML.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 Free energy Functions Graphic methods Inference engines Learning systems Population statistics Artificial Intelligence and Robotics Computer Sciences Numerical Analysis and Scientific Computing Theory and Algorithms |
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Artificial intelligence Free energy Functions Graphic methods Inference engines Learning systems Population statistics Artificial Intelligence and Robotics Computer Sciences Numerical Analysis and Scientific Computing Theory and Algorithms SUN, Tao SHELDON, Daniel KUMAR, Akshat Message Passing for Collective Graphical Models |
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Collective graphical models (CGMs) are a formalism for inference and learning about a population of independent and identically distributed individuals when only noisy aggregate data are available. We highlight a close connection between approximate MAP inference in CGMs and marginal inference in standard graphical models. The connection leads us to derive a novel Belief Propagation (BP) style algorithm for collective graphical models. Mathematically, the algorithm is a strict generalization of BP—it can be viewed as an extension to minimize the Bethe free energy plus additional energy terms that are non-linear functions of the marginals. For CGMs, the algorithm is much more efficient than previous approaches to inference. We demonstrate its performance on two synthetic experiments concerning bird migration and collective human mobility. |
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text |
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SUN, Tao SHELDON, Daniel KUMAR, Akshat |
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SUN, Tao SHELDON, Daniel KUMAR, Akshat |
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SUN, Tao |
title |
Message Passing for Collective Graphical Models |
title_short |
Message Passing for Collective Graphical Models |
title_full |
Message Passing for Collective Graphical Models |
title_fullStr |
Message Passing for Collective Graphical Models |
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Message Passing for Collective Graphical Models |
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message passing for collective graphical models |
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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/2914 https://ink.library.smu.edu.sg/context/sis_research/article/3914/viewcontent/MessagePassingCollectiveGraphicalModels_2015_ICML.pdf |
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