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Data analysis / Singular value decomposition / Principal component analysis / Econometrics / XLSTAT / Eigenvalues and eigenvectors / Regression analysis / Biplot / Variance / Statistics / Algebra / Multivariate statistics
Date: 2011-11-17 10:33:22
Data analysis
Singular value decomposition
Principal component analysis
Econometrics
XLSTAT
Eigenvalues and eigenvectors
Regression analysis
Biplot
Variance
Statistics
Algebra
Multivariate statistics

Running a Principal Component Analysis (PCA) with XLSTAT demoPCA.xls Dataset for running a Principal Component Analysis An Excel sheet containing both the data and the results for use in this tutorial can be downloaded

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