Last data update: 2014.03.03

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R Release (3.2.3)
CranContrib
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Results 1 - 2 of 2 found.
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RepeatABEL : GWAS for Multiple Observations on Related Individuals

Package: RepeatABEL
Type: Package
Title: GWAS for Multiple Observations on Related Individuals
Version: 1.0
Date: 2015-11-23
Author: Lars Ronnegard
Maintainer: Lars Ronnegard <lrn@du.se>
Description: Performs genome-wide association studies on individuals that are both related and have repeated measurements.
License: GPL
Imports: methods, stats
Depends: R (>= 2.10), hglm, GenABEL
Packaged: 2015-11-24 07:28:52 UTC; lars
NeedsCompilation: no
Repository: CRAN
Date/Publication: 2015-11-24 15:03:54

● Data Source: CranContrib
7 images, 8 functions, 4 datasets
● Reverse Depends: 0

bigRR : Generalized Ridge Regression (with special advantage for p >> n cases)

Package: bigRR
Type: Package
Title: Generalized Ridge Regression (with special advantage for p >> n
cases)
Version: 1.3-10
Date: 2014-08-23
Author: Xia Shen, Moudud Alam and Lars Ronnegard
Maintainer: Xia Shen <xia.shen@ki.se>
Description: The package fits large-scale (generalized) ridge regression for various distributions of response. The shrinkage parameters (lambdas) can be pre-specified or estimated using an internal update routine (fitting a heteroscedastic effects model, or HEM). It gives possibility to shrink any subset of parameters in the model. It has special computational advantage for the cases when the number of shrinkage parameters exceeds the number of observations. For example, the package is very useful for fitting large-scale omics data, such as high-throughput genotype data (genomics), gene expression data (transcriptomics), metabolomics data, etc.
Depends: R (>= 2.10), utils, hglm, DatABEL
License: GPL (>= 2)
LazyLoad: yes
Packaged: 2014-08-23 06:09:24 UTC; xia
NeedsCompilation: no
Repository: CRAN
Date/Publication: 2014-08-23 09:38:31

● Data Source: CranContrib
● Cran Task View: MachineLearning
● 0 images, 7 functions, 6 datasets
● Reverse Depends: 0