Regularized nonnegative shared subspace learning

Volume: 26, Issue: 1, Pages: 57 - 97
Published: Nov 16, 2011
Abstract
Joint modeling of related data sources has the potential to improve various data mining tasks such as transfer learning, multitask clustering, information retrieval etc. However, diversity among various data sources might outweigh the advantages of the joint modeling, and thus may result in performance degradations. To this end, we propose a regularized shared subspace learning framework, which can exploit the mutual strengths of related data...
Paper Details
Title
Regularized nonnegative shared subspace learning
Published Date
Nov 16, 2011
Volume
26
Issue
1
Pages
57 - 97
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