作者
Liangxiao Jiang, Lungan Zhang, Chaoqun Li, Jia Wu
发表日期
2018/5/15
期刊
IEEE transactions on knowledge and data engineering
卷号
31
期号
2
页码范围
201-213
出版商
IEEE
简介
Due to its simplicity, efficiency, and efficacy, naive Bayes (NB) has continued to be one of the top 10 algorithms in the data mining and machine learning community. Of numerous approaches to alleviating its conditional independence assumption, feature weighting has placed more emphasis on highly predictive features than those that are less predictive. In this paper, we argue that for NB highly predictive features should be highly correlated with the class (maximum mutual relevance), yet uncorrelated with other features (minimum mutual redundancy). Based on this premise, we propose a correlation-based feature weighting (CFW) filter for NB. In CFW, the weight for a feature is a sigmoid transformation of the difference between the feature-class correlation (mutual relevance) and the average feature-feature intercorrelation (average mutual redundancy). Experimental results show that NB with CFW significantly …
引用总数
20182019202020212022202320243204041505427
学术搜索中的文章
L Jiang, L Zhang, C Li, J Wu - IEEE transactions on knowledge and data engineering, 2018