DocumentCode
3022731
Title
Graph-based semi-supervised multi-label learning method
Author
Zhang Chen-Guang ; Zhang Xia-Huan
Author_Institution
Coll. of Inf. & Technol., Hainan Univ., Haikou, China
fYear
2013
fDate
20-22 Dec. 2013
Firstpage
1021
Lastpage
1025
Abstract
The problem of multi-label classification has attracted great interest in the last decade. However, most multi-label learning methods only focus on supervised settings, and can not effectively make use of relatively inexpensive and easily obtained large number of unlabeled samples. To solve this problem, we put forward a novel graph-based semi-supervised multi-label learning method, called GSMM. GSMM characterize the inherent correlations among multiple labels by Hilbert-Schmidt independence criterion. It´s expected to derive the optimal assignment of class membership to unlabeled samples by maximizing the consistency of class label correlations and simultaneously as smooth as possible on sample feature graph. The experiments comparing GSMM to the state-of-the-art multi-label learning approaches on several real-world datasets show GSMM can effectively learn from the labeled and unlabeled samples. Especially when the labeled is relatively rare, it can improve the performance greatly.
Keywords
graph theory; learning (artificial intelligence); pattern classification; GSMM; Hilbert-Schmidt independence criterion; class label correlation; graph-based semisupervised multilabel learning; multilabel classification; Classification algorithms; Correlation; Kernel; Learning systems; Measurement; Optimization; Vectors; Hilbert-Schimidt independence criterion; graph based semi-superivsed learning; multi-label learning;
fLanguage
English
Publisher
ieee
Conference_Titel
Mechatronic Sciences, Electric Engineering and Computer (MEC), Proceedings 2013 International Conference on
Conference_Location
Shengyang
Print_ISBN
978-1-4799-2564-3
Type
conf
DOI
10.1109/MEC.2013.6885211
Filename
6885211
Link To Document