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Principal component analysis
Known as:
Principle components analysis
, Principle Component Analysis
, Probabilistic principal component analysis
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Principal component analysis (PCA) is a statistical procedure that uses an orthogonal transformation to convert a set of observations of possibly…
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Ali Akansu
Analytica
Apache Spark
Biplot
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Papers overview
Semantic Scholar uses AI to extract papers important to this topic.
2010
2010
A New Method for Maintenance Management Employing Principal Component Analysis
Fausto Pedro Garc
,
rquez
2010
Corpus ID: 59394587
This paper presents a simple graphic method for detecting and classifying faults in point mechanisms based on the study of some…
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Highly Cited
2009
Highly Cited
2009
Reduced‐order modeling of parameterized PDEs using time–space‐parameter principal component analysis
Christophe Audouze
,
F. Vuyst
,
P. Nair
2009
Corpus ID: 123430690
This paper presents a methodology for constructing low‐order surrogate models of finite element/finite volume discrete solutions…
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Highly Cited
2008
Highly Cited
2008
High-dimensional analysis of semidefinite relaxations for sparse principal components
A. Amini
,
M. Wainwright
IEEE International Symposium on Information…
2008
Corpus ID: 1110006
In problem of sparse principal components analysis (SPCA), the goal is to use n i.i.d. samples to estimate the leading…
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Review
2005
Review
2005
A review of principal component analysis and its applications to color technology
Di-yuan Tzeng
,
R. Berns
2005
Corpus ID: 60967249
Principal component analysis, abbreviated PCA, has been an important and useful mathematical tool in color technology since the…
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Highly Cited
2005
Highly Cited
2005
Coherency identification in power systems through principal component analysis
K. Anaparthi
,
B. Chaudhuri
,
N. Thornhill
,
B. Pal
IEEE Transactions on Power Systems
2005
Corpus ID: 24984734
In this letter, a new technique to identify coherent generators in large interconnected power system using measurements of…
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Highly Cited
2005
Highly Cited
2005
Gene expression A web-based tool for principal component and significance analysis of microarray data
A. Sharov
,
D. Dudekula
,
M. Ko
2005
Corpus ID: 8632575
Summary: We have developed a program for microarray data analysis, which features the false discovery rate for testing…
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Highly Cited
2004
Highly Cited
2004
Source apportionment of ambient non-methane hydrocarbons in Hong Kong : Application of a principal component analysis / absolute principal component scores ( PCA / APCS ) receptor model
H. Guoa
,
T. Wanga
,
P. K. K. Louieb
2004
Corpus ID: 5155820
Receptor-oriented source apportionment models are often used to identify sources of ambient air pollutants and to estimate source…
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Review
2003
Review
2003
A TUTORIAL ON PRINCIPAL COMPONENT ANALYSIS Derivation , Discussion and Singular Value Decomposition
Jonathon Shlens
2003
Corpus ID: 8004356
Principal component analysis (PCA) is a mainstay of modern data analysis a black box that is widely used but poorly understood…
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Highly Cited
2002
Highly Cited
2002
Principal Component Analysis for Dimension Reduction in Massive Distributed Data Sets ∗
Yongming Qu
,
G. Ostrouchov
,
N. Samatova
,
A. Geist
2002
Corpus ID: 14395199
We describe a new method for computing a global principal component analysis (PCA) for the purpose of dimension reduction in data…
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Highly Cited
1987
Highly Cited
1987
Application of principal components analysis to change detection
T. Fung
,
E. LeDrew
1987
Corpus ID: 132379112
: Principal components analysis (PCA) has been applied for land-cover change detection with multitemporal Landsat Multispectral…
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