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Projection spectral analysis: A unified approach to PCA and ICA with incremental learning

Authors
Kang, HoonLee, Su Hyun
Issue Date
Oct-2018
Publisher
WILEY
Keywords
independent component analysis; machine learning; neural network; principal component analysis; projection spectral analysis; singular value decomposition; spectral theorem
Citation
ETRI JOURNAL, v.40, no.5, pp 634 - 642
Pages
9
Journal Title
ETRI JOURNAL
Volume
40
Number
5
Start Page
634
End Page
642
URI
https://scholarworks.bwise.kr/cau/handle/2019.sw.cau/729
DOI
10.4218/etrij.2017-0304
ISSN
1225-6463
2233-7326
Abstract
Projection spectral analysis is investigated and refined in this paper, in order to unify principal component analysis and independent component analysis. Singular value decomposition and spectral theorems are applied to nonsymmetric correlation or covariance matrices with multiplicities or singularities, where projections and nilpotents are obtained. Therefore, the suggested approach not only utilizes a sum-product of orthogonal projection operators and real distinct eigenvalues for squared singular values, but also reduces the dimension of correlation or covariance if there are multiple zero eigenvalues. Moreover, incremental learning strategies of projection spectral analysis are also suggested to improve the performance.
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창의ICT공과대학 (전자전기공학부)
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