Learning Bayesian network parameters from small data set: A spatially maximum a posteriori method

Zhi gao Guo, Xiao guang Gao, Ruo hai Di, Yu Yang

Research output: Chapter in Book/Report/Conference proceedingConference contributionpeer-review

2 Scopus citations

Abstract

To learn accurate BN parameters from small data set, combined with data, domain knowledge is often incorporated into the learning process as parameter constraints. Currently, most of the existing parameter learning methods take parameter learning problem as an exact optimization problem and regard the optimal solutions as the final parameters. However, due to the scarcity of data, objective functions constructed from the data, like likelihood function and entropy function, are not accurate. Therefore, parameters derived from the objective functions do not approach the true parameters well while some suboptimal parameters fit the true parameters better. Thus, searching more reasonable suboptimal parameters is a possible approach to learn better BN parameters. In this paper, we propose to visualize suboptimal parameters with parallel coordinate system and propose a Spatially Maximum a Posteriori (SMAP) method. Experimental results reveal that the proposed method outperforms most of the existing parameter learning methods.

Original languageEnglish
Title of host publicationAdvanced Methodologies for Bayesian Networks - 2nd International Workshop, AMBN 2015, Proceedings
EditorsJoe Suzuki, Maomi Ueno
PublisherSpringer Verlag
Pages32-45
Number of pages14
ISBN (Print)9783319283784
DOIs
StatePublished - 2015
Event2nd International Workshop on Advanced Methodologies for Bayesian Networks, AMBN 2015 - Yokohama, Japan
Duration: 16 Nov 201518 Nov 2015

Publication series

NameLecture Notes in Computer Science (including subseries Lecture Notes in Artificial Intelligence and Lecture Notes in Bioinformatics)
Volume9505
ISSN (Print)0302-9743
ISSN (Electronic)1611-3349

Conference

Conference2nd International Workshop on Advanced Methodologies for Bayesian Networks, AMBN 2015
Country/TerritoryJapan
CityYokohama
Period16/11/1518/11/15

Keywords

  • Bayesian Networks
  • Convex optimization
  • Linear programming
  • Parameter learning
  • Small data set

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