An adaptive quasi-Newton algorithm for eigensubspace estimation. (Q2734429)
From MaRDI portal
| This is the item page for this Wikibase entity, intended for internal use and editing purposes. Please use this page instead for the normal view: An adaptive quasi-Newton algorithm for eigensubspace estimation. |
scientific article; zbMATH DE number 1634033
| Language | Label | Description | Also known as |
|---|---|---|---|
| English | An adaptive quasi-Newton algorithm for eigensubspace estimation. |
scientific article; zbMATH DE number 1634033 |
Statements
16 December 2001
0 references
quasi-Newton adaptive algorithm
0 references
principal component analysis
0 references
computational complexity
0 references
0.9015946
0 references
0.87984157
0 references
0.8766255
0 references
0.8760729
0 references
0.87414664
0 references
0.8741425
0 references
0.86837614
0 references
0.8653695
0 references
An adaptive quasi-Newton algorithm for eigensubspace estimation. (English)
0 references
The aim of the paper is to study the landscape of the cost function and to derive a new quasi-Newton (QN) adaptive algorithm for the principal component analysis. The proposed QN adaptive eigensubspace algorithm estimates first the principal eigenvector and then estimates the minor eigenvectors sequentially. The new QN algorithm is compared with recursive least-squares-type algorithms and shown to have faster and better tracking abilities. Compared with another quasi-Newton algorithm [G. Mathew, V. U. Reddy and S. Dasgupta (1995)], the new QN algorithm does not need any a priori information of the data covariance matrix for the choice of the penalty coefficient, and provides superior tracking performance. Extensive experiments of the investigated algorithms with stationary and non-stationary data are exposed, and interesting considerations on their computational complexity are given.
0 references