DocumentCode
1279636
Title
Discriminative Graph Embedding for Label Propagation
Author
Nguyen, Canh Hao ; Mamitsuka, Hiroshi
Author_Institution
Bioinf. Center, Kyoto Univ., Gokasho, Japan
Volume
22
Issue
9
fYear
2011
Firstpage
1395
Lastpage
1405
Abstract
In many applications, the available information is encoded in graph structures. This is a common problem in biological networks, social networks, web communities and document citations. We investigate the problem of classifying nodes´ labels on a similarity graph given only a graph structure on the nodes. Conventional machine learning methods usually require data to reside in some Euclidean spaces or to have a kernel representation. Applying these methods to nodes on graphs would require embedding the graphs into these spaces. By embedding and then learning the nodes on graphs, most methods are either flexible with different learning objectives or efficient enough for large scale applications. We propose a method to embed a graph into a feature space for a discriminative purpose. Our idea is to include label information into the embedding process, making the space representation tailored to the task. We design embedding objective functions that the following learning formulations become spectral transforms. We then reformulate these spectral transforms into multiple kernel learning problems. Our method, while being tailored to the discriminative tasks, is efficient and can scale to massive data sets. We show the need of discriminative embedding on some simulations. Applying to biological network problems, our method is shown to outperform baselines.
Keywords
data structures; graph theory; learning (artificial intelligence); pattern classification; Euclidean spaces; discriminative graph embedding; graph structure; kernel representation; label propagation; machine learning methods; multiple kernel learning problem; node label classification; similarity graph; space representation; spectral transform; Data mining; Eigenvalues and eigenfunctions; Feature extraction; Kernel; Laplace equations; Training; Transforms; Graph embedding; label propagation; multiple kernel learning; Artificial Intelligence; Computer Graphics; Computer Simulation; Decision Support Techniques; Humans; Information Systems; Pattern Recognition, Automated;
fLanguage
English
Journal_Title
Neural Networks, IEEE Transactions on
Publisher
ieee
ISSN
1045-9227
Type
jour
DOI
10.1109/TNN.2011.2160873
Filename
5959990
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