This paper explores effective multi-label classification methods for multi-semantic image and text categorization. We perform an experimental study of clustering based multi-label classification (CBMLC) for the target problem. Experimental evaluation is conducted for identifying the impact of different clustering algorithms and base classifiers on the predictive performance and efficiency of CBMLC. In the experimental setting, three widely used clustering algorithms and six popular multi-label classification algorithms are used and evaluated on multi-label image and text datasets. A multi-label classification evaluation metrics, micro F1-measure, is used for presenting predictive performances of the classifications. Experimental evaluation results reveal that clustering based multi-label learning algorithms are more effective compared to their non-clustering counterparts.
History
Pagination
869 - 874
Location
Hangzhou, China
Start date
2013-12-16
End date
2013-12-18
ISBN-13
9781479927647
Language
eng
Publication classification
E1 Full written paper - refereed; E Conference publication
Copyright notice
2013, IEEE
Title of proceedings
Proceedings of the 6th International Congress on Image and Signal Processing; CISP 2013