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Cai et al., 2007 - Google Patents

Spectral regression: A unified approach for sparse subspace learning

Cai et al., 2007

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Document ID
7684712357845563018
Author
Cai D
He X
Han J
Publication year
Publication venue
Seventh IEEE international conference on data mining (ICDM 2007)

External Links

Snippet

Recently the problem of dimensionality reduction (or, subspace learning) has received a lot of interests in many fields of information processing, including data mining, information retrieval, and pattern recognition. Some popular methods include principal component …
Continue reading at www.cad.zju.edu.cn (PDF) (other versions)

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