Title
Associated multi-label fuzzy-rough feature selection.
Abstract
Ahead of the process of selecting a subset of relevant features, the labels commonly need to be combined into a single one for multi-label feature selection. However the existing label combination methods assume that all labels are independent of each other and consequently suffer from high computation complexity. In this paper, association rules implied in the labels are explored to implement a fuzzy-rough feature selection method for multi-label datasets. Specifically, in order to reduce the scale of label and avoid the label overlapping phenomenon, the association rules between labels make the combination of labels collapse to a set of sub-labels. Then each set of sub-labels is regarded as a unique class during the following course of fuzzy-rough feature selection. Empirical results suggest that the quality of the selected features can be improved by the proposed approach compared to the alternative multi-label feature selection algorithms.
Year
Venue
Keywords
2017
Joint International Conference on Soft Computing and Intelligent Systems SCIS and International Symposium on Advanced Intelligent Systems ISIS
Multi-label feature selection,Association rule,Fuzzy-rough sets
Field
DocType
ISSN
Pattern recognition,Feature selection,Computer science,Feature (computer vision),Fuzzy logic,Automatic label placement,Association rule learning,Fuzzy rough sets,Artificial intelligence,Machine learning,Computation complexity
Conference
2377-6870
Citations 
PageRank 
References 
1
0.34
12
Authors
4
Name
Order
Citations
PageRank
Yanpeng Qu1297.46
Yu Rong223.06
Ansheng Deng323.72
Longzhi Yang418227.45