Static bayesian network parameter learning using constraints

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

Abstract

To solve the problem of the static Bayesian network parameter learning using small sample, a study under restrained condition is proposed in the light of backward recursive accumulation parameter algorithm with priori constraints. Based on the variable of prior parameters, the constraints of domain knowledge described by uniform distribution and optimization algorithm, a Dirichlet distribution of prior parameter that resembles the even distribution most is obtained. By substituting that prior parameter to a transition probability model, the parameter learning process is completed. The efficiency and accuracy of the algorithm can be authenticated by the evaluation model of UAV.

Original languageEnglish
Title of host publication2011 International Workshop on Multi-Platform/Multi-Sensor Remote Sensing and Mapping, M2RSM 2011
DOIs
StatePublished - 2011
Event2011 International Workshop on Multi-Platform/Multi-Sensor Remote Sensing and Mapping, M2RSM 2011 - Xiamen, China
Duration: 10 Jan 201112 Jan 2011

Publication series

Name2011 International Workshop on Multi-Platform/Multi-Sensor Remote Sensing and Mapping, M2RSM 2011

Conference

Conference2011 International Workshop on Multi-Platform/Multi-Sensor Remote Sensing and Mapping, M2RSM 2011
Country/TerritoryChina
CityXiamen
Period10/01/1112/01/11

Keywords

  • Constrain model
  • Small sample
  • Static bayesian network parameter learning
  • Threaten estimation

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