2025, Vol. 10, Issue 4, Part A
Tracing the historical, theoretical, and mathematical foundations of factor analysis and principal component analysis
Author(s): Rajiv Chooramun
Abstract: This paper explores the foundational distinctions
between Factor Analysis (FA) and Principal Component Analysis (PCA), focusing
on their historical origins, theoretical motivations, and mathematical
structures. FA emerged from early psychological research as a model-driven
technique to reveal latent traits underlying observed behaviors, particularly
in cognitive assessments. PCA, by contrast, developed from a mathematical need
to reduce data dimensionality and summarize variance without presupposing
hidden constructs. This study begins by tracing the intellectual lineage of
both methods, showing how FA evolved from psychological theory and PCA from
statistical geometry. A central contribution of the manuscript is a
side-by-side explanation of their mathematical formulations: FA models observed
variables as linear combinations of latent factors and error, whereas PCA
transforms data into uncorrelated principal components by maximizing total variance
explained. Practical examples are discussed to illustrate how the two methods
serve different research goals: FA for uncovering underlying psychological or
social constructs, and PCA for simplifying complex datasets in exploratory
analysis. This work clarifies frequent misconceptions between the two and
emphasizes their respective roles in multivariate analysis, offering guidance
for researchers selecting the appropriate method based on analytical purpose
and data structure.
DOI: 10.22271/maths.2025.v10.i4a.2014Pages: 05-12 | Views: 138 | Downloads: 20Download Full Article: Click Here
How to cite this article:
Rajiv Chooramun.
Tracing the historical, theoretical, and mathematical foundations of factor analysis and principal component analysis. Int J Stat Appl Math 2025;10(4):05-12. DOI:
10.22271/maths.2025.v10.i4a.2014