File Download

There are no files associated with this item.

  Links for fulltext
     (May Require Subscription)
Supplementary

Article: Spectral embedded clustering: A framework for in-sample and out-of-sample spectral clustering

TitleSpectral embedded clustering: A framework for in-sample and out-of-sample spectral clustering
Authors
KeywordsLinearity regularization
out-of-sample clustering
spectral clustering
spectral embedded clustering
Issue Date2011
Citation
IEEE Transactions on Neural Networks, 2011, v. 22, n. 11, p. 1796-1808 How to Cite?
AbstractSpectral clustering (SC) methods have been successfully applied to many real-world applications. The success of these SC methods is largely based on the manifold assumption, namely, that two nearby data points in the high-density region of a low-dimensional data manifold have the same cluster label. However, such an assumption might not always hold on high-dimensional data. When the data do not exhibit a clear low-dimensional manifold structure (e.g., high-dimensional and sparse data), the clustering performance of SC will be degraded and become even worse than K -means clustering. In this paper, motivated by the observation that the true cluster assignment matrix for high-dimensional data can be always embedded in a linear space spanned by the data, we propose the spectral embedded clustering (SEC) framework, in which a linearity regularization is explicitly added into the objective function of SC methods. More importantly, the proposed SEC framework can naturally deal with out-of-sample data. We also present a new Laplacian matrix constructed from a local regression of each pattern and incorporate it into our SEC framework to capture both local and global discriminative information for clustering. Comprehensive experiments on eight real-world high-dimensional datasets demonstrate the effectiveness and advantages of our SEC framework over existing SC methods and K-means-based clustering methods. Our SEC framework significantly outperforms SC using the Nystrm algorithm on unseen data. © 2011 IEEE.
Persistent Identifierhttp://hdl.handle.net/10722/321449
ISSN
2011 Impact Factor: 2.952
ISI Accession Number ID

 

DC FieldValueLanguage
dc.contributor.authorNie, Feiping-
dc.contributor.authorZeng, Zinan-
dc.contributor.authorTsang, Ivor W.-
dc.contributor.authorXu, Dong-
dc.contributor.authorZhang, Changshui-
dc.date.accessioned2022-11-03T02:19:00Z-
dc.date.available2022-11-03T02:19:00Z-
dc.date.issued2011-
dc.identifier.citationIEEE Transactions on Neural Networks, 2011, v. 22, n. 11, p. 1796-1808-
dc.identifier.issn1045-9227-
dc.identifier.urihttp://hdl.handle.net/10722/321449-
dc.description.abstractSpectral clustering (SC) methods have been successfully applied to many real-world applications. The success of these SC methods is largely based on the manifold assumption, namely, that two nearby data points in the high-density region of a low-dimensional data manifold have the same cluster label. However, such an assumption might not always hold on high-dimensional data. When the data do not exhibit a clear low-dimensional manifold structure (e.g., high-dimensional and sparse data), the clustering performance of SC will be degraded and become even worse than K -means clustering. In this paper, motivated by the observation that the true cluster assignment matrix for high-dimensional data can be always embedded in a linear space spanned by the data, we propose the spectral embedded clustering (SEC) framework, in which a linearity regularization is explicitly added into the objective function of SC methods. More importantly, the proposed SEC framework can naturally deal with out-of-sample data. We also present a new Laplacian matrix constructed from a local regression of each pattern and incorporate it into our SEC framework to capture both local and global discriminative information for clustering. Comprehensive experiments on eight real-world high-dimensional datasets demonstrate the effectiveness and advantages of our SEC framework over existing SC methods and K-means-based clustering methods. Our SEC framework significantly outperforms SC using the Nystrm algorithm on unseen data. © 2011 IEEE.-
dc.languageeng-
dc.relation.ispartofIEEE Transactions on Neural Networks-
dc.subjectLinearity regularization-
dc.subjectout-of-sample clustering-
dc.subjectspectral clustering-
dc.subjectspectral embedded clustering-
dc.titleSpectral embedded clustering: A framework for in-sample and out-of-sample spectral clustering-
dc.typeArticle-
dc.description.naturelink_to_subscribed_fulltext-
dc.identifier.doi10.1109/TNN.2011.2162000-
dc.identifier.pmid21965198-
dc.identifier.scopuseid_2-s2.0-80455143729-
dc.identifier.volume22-
dc.identifier.issue11-
dc.identifier.spage1796-
dc.identifier.epage1808-
dc.identifier.isiWOS:000296469500010-

Export via OAI-PMH Interface in XML Formats


OR


Export to Other Non-XML Formats