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Extracting Credible Dependencies for Averaged One-Dependence Estimator Analysis
Author(s) -
Limin Wang,
Shuangcheng Wang,
Xiongfei Li,
BaoRong Chi
Publication year - 2014
Publication title -
mathematical problems in engineering
Language(s) - English
Resource type - Journals
SCImago Journal Rank - 0.262
H-Index - 62
eISSN - 1026-7077
pISSN - 1024-123X
DOI - 10.1155/2014/470821
Subject(s) - conditional independence , dependency (uml) , estimator , independence (probability theory) , data mining , naive bayes classifier , functional dependency , bayesian probability , computer science , mathematics , cover (algebra) , matching (statistics) , artificial intelligence , machine learning , algorithm , statistics , engineering , support vector machine , mechanical engineering , relational database
Of the numerous proposals to improve the accuracy of naive Bayes (NB) by weakening the conditional independence assumption, averaged one-dependence estimator (AODE) demonstrates remarkable zero-one loss performance. However, indiscriminate superparent attributes will bring both considerable computational cost and negative effect on classification accuracy. In this paper, to extract the most credible dependencies we present a new type of seminaive Bayesian operation, which selects superparent attributes by building maximum weighted spanning tree and removes highly correlated children attributes by functional dependency and canonical cover analysis. Our extensive experimental comparison on UCI data sets shows that this operation efficiently identifies possible superparent attributes at training time and eliminates redundant children attributes at classification time

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