Title
Correlation-Aware Multi-Label Active Learning for Web Service Tag Recommendation
Abstract
Tag recommendation has gained significant popularity for annotating various web-based resources including web services. Compared with other approaches, tag recommendation based on supervised learning models usually lead to good accuracy. However, a high-quality training data set is needed, which demands manual tagging efforts from domain experts. While we could leverage the tags of existing web services assigned by their developers, the quality of these tags may not be good enough to build accurate classifiers for tag recommendation. In this paper, a novel multi-label active learning approach is proposed for web service tag recommendation. The proposed approach is able to identify a small number of most informative web services to be tagged by domain experts. We further minimize the domain expert efforts by learning and leveraging the correlations among tags to improve the active learning process. We conduct a comprehensive experimental study on a real-world data set and results demonstrate the effectiveness of our approach.
Year
DOI
Venue
2017
10.1109/ICWS.2017.37
2017 IEEE International Conference on Web Services (ICWS)
Keywords
Field
DocType
Tag recommendation,Active learning,Multi-label classification
Training set,Data mining,World Wide Web,Active learning,Information retrieval,Subject-matter expert,Computer science,Popularity,Supervised learning,Correlation,Cluster analysis,Web service
Conference
ISBN
Citations 
PageRank 
978-1-5386-0753-4
5
0.49
References 
Authors
12
3
Name
Order
Citations
PageRank
Weishi Shi164.23
Xumin Liu247134.87
Qi Yu377055.65