American University
Browse

Robust Principal Component Analysis

Download (1006.22 kB)
thesis
posted on 2023-08-03, 13:41 authored by Neil Racheed Kpamegan

In multivariate analysis, principal component analysis is a widely popular method which is used in many different fields. Though it has been extensively shown to work well when data follows multivariate normality, classical PCA suffers when data is heavy-tailed. Using PCA with the assumption that the data follows a stable distribution, we will show through simulations that a new method is better. We show the modified PCA can be used for heavy-tailed data and that we can more accurately estimate the correct number of components compared to classical PCA and more accurately identify the subspace spanned by the important components.

History

Publisher

ProQuest

Language

English

Handle

http://hdl.handle.net/1961/auislandora:73433

Media type

application/pdf

Access statement

Unprocessed

Usage metrics

    Theses and Dissertations

    Exports

    RefWorks
    BibTeX
    Ref. manager
    Endnote
    DataCite
    NLM
    DC