Please use this identifier to cite or link to this item:
https://hdl.handle.net/2440/102833
Citations | ||
Scopus | Web of Science® | Altmetric |
---|---|---|
?
|
?
|
Type: | Journal article |
Title: | Multi-label classification via learning a unified object-label graph with sparse representation |
Author: | Yao, L. Sheng, Q. Ngu, A. Gao, B. Li, X. Wang, S. |
Citation: | World Wide Web, 2016; 19(6):1125-1149 |
Publisher: | Springer |
Issue Date: | 2016 |
ISSN: | 1386-145X 1573-1413 |
Statement of Responsibility: | Lina Yao, Quan Z. Sheng, Anne H. H. Ngu, Byron J. Gao, Xue Li, Sen Wang |
Abstract: | Automatic annotation is an essential technique for effectively handling and organizing Web objects (e.g., Web pages), which have experienced an unprecedented growth over the last few years. Automatic annotation is usually formulated as a multi-label classification problem. Unfortunately, labeled data are often time-consuming and expensive to obtain. Web data also accommodate much richer feature space. This calls for new semi-supervised approaches that are less demanding on labeled data to be effective in classification. In this paper, we propose a graph-based semi-supervised learning approach that leverages random walks and ℓ1 sparse reconstruction on a mixed object-label graph with both attribute and structure information for effective multi-label classification. The mixed graph contains an object-affinity subgraph, a label-correlation subgraph, and object-label edges with adaptive weight assignments indicating the assignment relationships. The object-affinity subgraph is constructed using ℓ1 sparse graph reconstruction with extracted structural meta-text, while the label-correlation subgraph captures pairwise correlations among labels via linear combination of their co-occurrence similarity and kernel-based similarity. A random walk with adaptive weight assignment is then performed on the constructed mixed graph to infer probabilistic assignment relationships between labels and objects. Extensive experiments on real Yahoo! Web datasets demonstrate the effectiveness of our approach. |
Keywords: | Classification; multi-label classification; sparse reconstruction; random walk with restart |
Rights: | © Springer Science+Business Media New York 2015 |
DOI: | 10.1007/s11280-015-0376-7 |
Grant ID: | http://purl.org/au-research/grants/arc/DP140100104 http://purl.org/au-research/grants/arc/DP130104614 http://purl.org/au-research/grants/arc/FT140101247 |
Published version: | http://dx.doi.org/10.1007/s11280-015-0376-7 |
Appears in Collections: | Aurora harvest 7 Computer Science publications |
Files in This Item:
File | Description | Size | Format | |
---|---|---|---|---|
RA_hdl_102833.pdf Restricted Access | Restricted Access | 1.45 MB | Adobe PDF | View/Open |
Items in DSpace are protected by copyright, with all rights reserved, unless otherwise indicated.