Bayesian clustering in decomposable graphs

In this paper we propose a class of prior distributions on decomposable graphs, allowing for improved modeling flexibility. While existing methods solely penalize the number of edges, the proposed work empowers practitioners to control clustering, level of separation, and other features of the graph...

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Main Authors: Bornn, L, Caron, F
Format: Journal article
Language:English
Published: 2011
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author Bornn, L
Caron, F
author_facet Bornn, L
Caron, F
author_sort Bornn, L
collection OXFORD
description In this paper we propose a class of prior distributions on decomposable graphs, allowing for improved modeling flexibility. While existing methods solely penalize the number of edges, the proposed work empowers practitioners to control clustering, level of separation, and other features of the graph. Emphasis is placed on a particular prior distribution which derives its motivation from the class of product partition models; the properties of this prior relative to existing priors are examined through theory and simulation. We then demonstrate the use of graphical models in the field of agriculture, showing how the proposed prior distribution alleviates the in flexibility of previous approaches in properly modeling the interactions between the yield of different crop varieties. Lastly, we explore American voting data, comparing the voting patterns amongst the states over the last century. © 2011 International Society for Bayesian Analysis.
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spelling oxford-uuid:8092d5b5-0616-4399-a9fe-e378202435732022-03-26T21:24:15ZBayesian clustering in decomposable graphsJournal articlehttp://purl.org/coar/resource_type/c_dcae04bcuuid:8092d5b5-0616-4399-a9fe-e37820243573EnglishSymplectic Elements at Oxford2011Bornn, LCaron, FIn this paper we propose a class of prior distributions on decomposable graphs, allowing for improved modeling flexibility. While existing methods solely penalize the number of edges, the proposed work empowers practitioners to control clustering, level of separation, and other features of the graph. Emphasis is placed on a particular prior distribution which derives its motivation from the class of product partition models; the properties of this prior relative to existing priors are examined through theory and simulation. We then demonstrate the use of graphical models in the field of agriculture, showing how the proposed prior distribution alleviates the in flexibility of previous approaches in properly modeling the interactions between the yield of different crop varieties. Lastly, we explore American voting data, comparing the voting patterns amongst the states over the last century. © 2011 International Society for Bayesian Analysis.
spellingShingle Bornn, L
Caron, F
Bayesian clustering in decomposable graphs
title Bayesian clustering in decomposable graphs
title_full Bayesian clustering in decomposable graphs
title_fullStr Bayesian clustering in decomposable graphs
title_full_unstemmed Bayesian clustering in decomposable graphs
title_short Bayesian clustering in decomposable graphs
title_sort bayesian clustering in decomposable graphs
work_keys_str_mv AT bornnl bayesianclusteringindecomposablegraphs
AT caronf bayesianclusteringindecomposablegraphs