Determining The Number of Principal Components with Schur's Theorem in Principal Component Analysis
View/ Open
Date
2023Author
KARAKUZULU, Cihan
GÜMÜŞ, İbrahim Halil
GÜLDAL, Serkan
YAVAŞ, Mustafa
Metadata
Show full item recordAbstract
Principal Component Analysis is a method for reducing the dimensionality of datasets while also limiting information loss. It accomplishes this by producing uncorrelated variables that maximize variance one after the other. The accepted criterion for evaluating a Principal Component’s (PC) performance is 𝜆�𝑗� 𝑡�𝑟�(𝑺�) where 𝑡�𝑟�(𝑺�) indicates the trace of the covariance matrix S. It is standard procedure to determine how many PCs should be maintained using a specified total variance. In this study, the diagonal elements of the covariance matrix are used instead of the eigenvalues to determine how many PCs need to be considered to obtain the defined threshold of the total variance. For this, an approach which uses one of the important theorems of majorization theory is proposed. Based on the tests, this approach lowers computational costs.
Collections

DSpace@BEU by Bitlis Eren University Institutional Repository is licensed under a Creative Commons Attribution-NonCommercial-NoDerivs 4.0 Unported License..