Skip to search formSkip to main contentSkip to account menu

Principal component analysis

Known as: Principle components analysis, Principle Component Analysis, Probabilistic principal component analysis 
Principal component analysis (PCA) is a statistical procedure that uses an orthogonal transformation to convert a set of observations of possibly… 
Wikipedia (opens in a new tab)

Papers overview

Semantic Scholar uses AI to extract papers important to this topic.
2010
2010
This paper presents a simple graphic method for detecting and classifying faults in point mechanisms based on the study of some… 
Highly Cited
2009
Highly Cited
2009
This paper presents a methodology for constructing low‐order surrogate models of finite element/finite volume discrete solutions… 
Highly Cited
2008
Highly Cited
2008
In problem of sparse principal components analysis (SPCA), the goal is to use n i.i.d. samples to estimate the leading… 
Review
2005
Review
2005
Principal component analysis, abbreviated PCA, has been an important and useful mathematical tool in color technology since the… 
Highly Cited
2005
Highly Cited
2005
In this letter, a new technique to identify coherent generators in large interconnected power system using measurements of… 
Highly Cited
2005
Highly Cited
2005
Summary: We have developed a program for microarray data analysis, which features the false discovery rate for testing… 
Highly Cited
2004
Highly Cited
2004
Receptor-oriented source apportionment models are often used to identify sources of ambient air pollutants and to estimate source… 
Review
2003
Review
2003
Principal component analysis (PCA) is a mainstay of modern data analysis a black box that is widely used but poorly understood… 
Highly Cited
2002
Highly Cited
2002
We describe a new method for computing a global principal component analysis (PCA) for the purpose of dimension reduction in data… 
Highly Cited
1987
Highly Cited
1987
: Principal components analysis (PCA) has been applied for land-cover change detection with multitemporal Landsat Multispectral…