Logo Goletty

Intervention Learning of Local Causal Structure Based on Sensitivity Analysis
Journal Title Journal of Computers
Journal Abbreviation jcp
Publisher Group Academy Publisher
Website http://ojs.academypublisher.com
PDF (589 kb)
   
Title Intervention Learning of Local Causal Structure Based on Sensitivity Analysis
Authors Jiang, Jianguo; Fang, Shuai; Chang, Jian; Yao, Hongliang; Li, Junzhao
Abstract As intervened edges are difficult to be determined when intervention method is used for learning the causal relationships of probability model, an active learning method (Structural Intervention Learning of Sensitivity Analysis –SILSA Algorithm) is proposed. SILSA algorithm obtains original network structure based on k2 algorithm, then uses junction tree algorithm to decompose original networks structure and takes local intervention learning in every clique of junction tree, which can decrease the searching extension of intervened edges. Causal Bayesian networks can be learned by Edge-based Interventions when intervened edges are selected. In order to get appropriate intervened edge, sensitivity analysis is used to select the important edge in SILSA algorithm. The efficient of selecting intervened edge is improved. Experimental results show that the effectiveness and performance of SILSA algorithm are better than intervened edges with choosing randomly and passive learning method.
Publisher ACADEMY PUBLISHER
Date 2013-04-01
Source Journal of Computers Vol 8, No 4 (2013)
Rights Copyright © ACADEMY PUBLISHER - All Rights Reserved.To request permission, please check out URL: http://www.academypublisher.com/copyrightpermission.html.

 

See other article in the same Issue


Goletty © 2024