Biomedical knowledge discovery with topological constraints modeling in bayesian networks: A preliminary report

Serving as exploratory data analysis tools, Bayesian networks (BNs) can be automatically learned from data to compactly model direct dependency relationships among the variables in a domain. A major challenge in BN learning is to effectively represent and incorporate domain knowledge in the learning...

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Main Authors: Li G., Tze-Yun LEONG
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Language:English
Published: Institutional Knowledge at Singapore Management University 2007
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Online Access:https://ink.library.smu.edu.sg/sis_research/2998
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spelling sg-smu-ink.sis_research-39982016-02-05T06:30:05Z Biomedical knowledge discovery with topological constraints modeling in bayesian networks: A preliminary report Li G., Tze-Yun LEONG, Serving as exploratory data analysis tools, Bayesian networks (BNs) can be automatically learned from data to compactly model direct dependency relationships among the variables in a domain. A major challenge in BN learning is to effectively represent and incorporate domain knowledge in the learning process to improve its efficiency and accuracy. In this paper, we examine two types of domain knowledge representation in BNs: matrix and rule. We develop a set of consistency checking mechanisms for the representations and describe their applications in BN learning. Empirical results from the canonical Asia network example show that topological constraints, especially those imposed on the undirected links in the corresponding completed partially directed acyclic graph (CPDAG) of the learned BN, are particularly useful. Preliminary experiments on a real-life coronary artery disease dataset show that both efficiency and accuracy can be improved with the proposed methodology. The bootstrap approach adopted in the BN learning process with topological constraints also highlights the set of the learned links with high significance, which can in turn prompt further exploration of the actual relationships involved. 2007-12-01T08:00:00Z text https://ink.library.smu.edu.sg/sis_research/2998 Research Collection School Of Computing and Information Systems eng Institutional Knowledge at Singapore Management University Bayesian networks bootstrap approach coronary artery disease domain knowledge Health Information Technology OS and Networks
institution Singapore Management University
building SMU Libraries
continent Asia
country Singapore
Singapore
content_provider SMU Libraries
collection InK@SMU
language English
topic Bayesian networks
bootstrap approach
coronary artery disease
domain knowledge
Health Information Technology
OS and Networks
spellingShingle Bayesian networks
bootstrap approach
coronary artery disease
domain knowledge
Health Information Technology
OS and Networks
Li G.,
Tze-Yun LEONG,
Biomedical knowledge discovery with topological constraints modeling in bayesian networks: A preliminary report
description Serving as exploratory data analysis tools, Bayesian networks (BNs) can be automatically learned from data to compactly model direct dependency relationships among the variables in a domain. A major challenge in BN learning is to effectively represent and incorporate domain knowledge in the learning process to improve its efficiency and accuracy. In this paper, we examine two types of domain knowledge representation in BNs: matrix and rule. We develop a set of consistency checking mechanisms for the representations and describe their applications in BN learning. Empirical results from the canonical Asia network example show that topological constraints, especially those imposed on the undirected links in the corresponding completed partially directed acyclic graph (CPDAG) of the learned BN, are particularly useful. Preliminary experiments on a real-life coronary artery disease dataset show that both efficiency and accuracy can be improved with the proposed methodology. The bootstrap approach adopted in the BN learning process with topological constraints also highlights the set of the learned links with high significance, which can in turn prompt further exploration of the actual relationships involved.
format text
author Li G.,
Tze-Yun LEONG,
author_facet Li G.,
Tze-Yun LEONG,
author_sort Li G.,
title Biomedical knowledge discovery with topological constraints modeling in bayesian networks: A preliminary report
title_short Biomedical knowledge discovery with topological constraints modeling in bayesian networks: A preliminary report
title_full Biomedical knowledge discovery with topological constraints modeling in bayesian networks: A preliminary report
title_fullStr Biomedical knowledge discovery with topological constraints modeling in bayesian networks: A preliminary report
title_full_unstemmed Biomedical knowledge discovery with topological constraints modeling in bayesian networks: A preliminary report
title_sort biomedical knowledge discovery with topological constraints modeling in bayesian networks: a preliminary report
publisher Institutional Knowledge at Singapore Management University
publishDate 2007
url https://ink.library.smu.edu.sg/sis_research/2998
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