Authors
Jari Miettinen, Klaus Nordhausen, Hannu Oja, Sara Taskinen
Publication date
2014/11/1
Journal
IEEE Transactions on Signal Processing
Volume
62
Issue
21
Pages
5716-5724
Publisher
IEEE
Description
Deflation-based FastICA is a popular method for independent component analysis. In the standard deflation-based approach the row vectors of the unmixing matrix are extracted one after another always using the same nonlinearities. In practice the user has to choose the nonlinearities and the efficiency and robustness of the estimation procedure then strongly depends on this choice as well as on the order in which the components are extracted. In this paper we propose a novel adaptive two-stage deflation-based FastICA algorithm that (i) allows one to use different nonlinearities for different components and (ii) optimizes the order in which the components are extracted. Based on a consistent preliminary unmixing matrix estimate and our theoretical results, the algorithm selects in an optimal way the order and the nonlinearities for each component from a finite set of candidates specified by the user. It is also shown …
Total citations
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Scholar articles
J Miettinen, K Nordhausen, H Oja, S Taskinen - IEEE Transactions on Signal Processing, 2014