作者
Noelia Sánchez-Maroño, Amparo Alonso-Betanzos, María Tombilla-Sanromán
发表日期
2007/12/16
图书
International Conference on Intelligent Data Engineering and Automated Learning
页码范围
178-187
出版商
Springer Berlin Heidelberg
简介
Adequate selection of features may improve accuracy and efficiency of classifier methods. There are two main approaches for feature selection: wrapper methods, in which the features are selected using the classifier, and filter methods, in which the selection of features is independent of the classifier used. Although the wrapper approach may obtain better performances, it requires greater computational resources. For this reason, lately a new paradigm, hybrid approach, that combines both filter and wrapper methods has emerged. One of its problems is to select the filter method that gives the best relevance index for each case, and this is not an easy to solve question. Different approaches to relevance evaluation lead to a large number of indices for ranking and selection. In this paper, several filter methods are applied over artificial data sets with different number of relevant features, level of noise in the …
引用总数
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