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A Convergent Solution to Tensor Subspace Learning (2007)

Abstract
Recently, substantial efforts have been devoted to the subspace learning techniques based on tensor representation, such as 2DLDA [Ye et al., 2004], DATER [Yan et al., 2005] and Tensor Subspace Analysis (TSA) [He et al., 2005]. In this context, a vital yet unsolved problem is that the computational convergency of these iterative algorithms is not guaranteed. In this work, we present a novel solution procedure for general tensor-based subspace learning, followed by a detailed convergency proof of the solution projection matrices and the objective function value. Extensive experiments on realworld databases verify the high convergence speed of the proposed procedure, as well as its superiority in classification capability over traditional solution procedures. 1

Publication details
Download http://citeseerx.ist.psu.edu/viewdoc/summary?doi=10.1.1.76.1096
Source http://dli.iiit.ac.in/ijcai/IJCAI-2007/PDF/IJCAI07-100.pdf
Contributors CiteSeerX
Repository CiteSeerX - Scientific Literature Digital Library and Search Engine (United States)
Type text
Language English
Relation 10.1.1.10.3247, 10.1.1.14.7702, 10.1.1.97.4344, 10.1.1.129.4776, 10.1.1.73.3529, 10.1.1.4.5999, 10.1.1.128.2215, 10.1.1.130.2814