題名: Bayesian Classication for Set and Interval Data
作者: Huang, Hung-Ju
Hsu, Chun-Nan
關鍵字: Naive Bayesian Classier
Machine Learning
Interval Query
Data Mining
期刊名/會議名稱: 2000 ICS會議
摘要: Learning naive Bayesian classiers is an impor- tant approach to probabilistic induction. However, no study has been done on naive Bayesian classiers when a query vector includes interval-valued data, and little is known about how a set of query vectors from the same unknown class can be accurately classied. In this paper, we present a new training approach to the problems above. This ap- proach is based on the \perfect aggregation" property of the Dirichlet distribution, which is usually assumed to be the prior of the variables in a Bayesian classier. The exper- imental results show that when we merge an appropriate number of query vectors with the same unknown class and the interval-valued data are formed, the acccuracies of a trained naive Bayesian classier can be promoted signi- cantly. This paper also reports a successful application of our approach in speaker recognition.
日期: 2006-10-26T02:32:00Z
分類:2000年 ICS 國際計算機會議

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