Learning Bayesian network parameters under new monotonie constraints

Ruohai Di, Xiaoguang Gao, Zhigao Guo

Research output: Contribution to journalArticlepeer-review

8 Scopus citations

Abstract

When the training data are insufficient, especially when only a small sample size of data is available, domain knowledge will be taken into the process of learning parameters to improve the performance of the Bayesian networks. In this paper, a new monotonic constraint model is proposed to represent a type of common domain knowledge. And then, the monotonic constraint estimation algorithm is proposed to learn the parameters with the monotonic constraint model. In order to demonstrate the superiority of the proposed algorithm, series of experiments are carried out. The experiment results show that the proposed algorithm is able to obtain more accurate parameters compared to some existing algorithms while the complexity is not the highest.

Original languageEnglish
Article number8277374
Pages (from-to)1248-1255
Number of pages8
JournalJournal of Systems Engineering and Electronics
Volume28
Issue number6
DOIs
StatePublished - Dec 2017

Keywords

  • Bayesian networks
  • new monotonic constraint
  • parameter learning

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