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A lot of works have shown that frobenius-norm-based representation (FNR) is competitive to sparse representation and nuclear-norm-based representation (NNR) in numerous tasks such as subspace clustering. Despite the success of FNR in experimental studies, less theoretical analysis is provided to understand its working mechanism. In this brief, we fill this gap by building the theoretical connections between FNR and NNR. More specially, we prove that: 1) when the dictionary can provide enough representative capacity, FNR is exactly NNR even though the data set contains the Gaussian noise, Laplacian noise, or sample-specified corruption and 2) otherwise, FNR and NNR are two solutions on the column space of the dictionary.
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Xi Peng
Hunan University
Canyi Lu
Zhejiang Sci-Tech University
Yi Zhang
Zhejiang University of Science and Technology
IEEE Transactions on Neural Networks and Learning Systems
National University of Singapore
Agency for Science, Technology and Research
Sichuan University
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Peng et al. (Thu,) studied this question.
synapsesocial.com/papers/6a16c2bf62528a85c6053915 — DOI: https://doi.org/10.1109/tnnls.2016.2608834