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An overview of large-dimensional covariance and precision matrix estimators with applications in chemometrics
- Source :
- Journal of Chemometrics, 31(4):e2880. Wiley, Journal of Chemometrics, 31, 1-19, Journal of Chemometrics, 31, 4, pp. 1-19
- Publication Year :
- 2017
-
Abstract
- The covariance matrix (or its inverse, the precision matrix) is central to many chemometric techniques. Traditional sample estimators perform poorly for high-dimensional data such as metabolomics data. Because of this, many traditional inference techniques break down or produce unreliable results. In this paper, we selectively review several modern estimators of the covariance and precision matrix that improve upon the traditional sample estimator. We focus on 3 general techniques: eigenvalue-shrinkage estimation, ridge-type estimation, and structured estimation. These methods rely on different assumptions regarding the structure of the covariance or precision matrix. Various examples, in particular using metabolomics data, are used to compare these techniques and to demonstrate that in concert with, eg, principal component analysis, multivariate analysis of variance, and Gaussian graphical models, better results are obtained.We selectively review modern estimators of the covariance and precision matrix focusing on 3 general techniques, namely, eigenvalue-shrinkage estimation, ridge-type estimation, and structured estimation. These methods rely on different structural assumptions of the covariance or precision matrix. Various examples, in particular using metabolomics data, are used to compare these techniques and to demonstrate that in concert with, eg, principal component analysis, multivariate analysis of variance, and Gaussian graphical models, better results are obtained.
- Subjects :
- 0301 basic medicine
GAUSSIAN GRAPHICAL MODELS
SELECTION
METABOLOMICS DATA
Computer science
Gaussian
INVERSE
LASSO
sparse precision matrix
01 natural sciences
TOTAL CORRELATION SPECTROSCOPY
Analytical Chemistry
010104 statistics & probability
03 medical and health sciences
Matrix (mathematics)
symbols.namesake
SPARSE ESTIMATION
Lasso (statistics)
Statistics
SHRINKAGE ESTIMATION
Graphical model
PENALIZED NORMAL LIKELIHOOD
0101 mathematics
NUCLEAR-MAGNETIC-RESONANCE
Covariance matrix
Applied Mathematics
Estimator
Covariance
sparse covariance matrix
metabolomics
ridge-type estimation
030104 developmental biology
Principal component analysis
symbols
eigenvalue shrinkage
Algorithm
Subjects
Details
- ISSN :
- 08869383
- Volume :
- 31
- Database :
- OpenAIRE
- Journal :
- Journal of Chemometrics
- Accession number :
- edsair.doi.dedup.....52db2246decfac00de0bc8becc89f5cd