| Type: | Package | 
| Title: | Permutation Testing in High-Dimensional Linear Models | 
| Version: | 0.2 | 
| Date: | 2022-01-05 | 
| Author: | Jesse Hemerik, Livio Finos | 
| Maintainer: | Jesse Hemerik <jesse.hemerik@wur.nl> | 
| Description: | Provides permutation methods for testing in high-dimensional linear models. The tests are often robust against heteroscedasticity and non-normality and usually perform well under anti-sparsity. See Hemerik, Thoresen and Finos (2021) <doi:10.1080/00949655.2020.1836183>. | 
| License: | GPL-2 | GPL-3 [expanded from: GNU General Public License] | 
| Imports: | methods, stats, glmnet | 
| NeedsCompilation: | no | 
| Packaged: | 2022-01-05 15:51:20 UTC; Jesse | 
| Repository: | CRAN | 
| Date/Publication: | 2022-01-06 00:20:05 UTC | 
Freedman-Lane HD
Description
Provides a class of tests for testing in high-dimensional linear models. The tests are robust against heteroscedasticity and non-normality. They often provide good type I error control even under anti-sparsity.
Usage
  FLhd(y,X,X1,nperm=2E4,lambda="lambda.min",flip="FALSE",nfolds=10,statistic="partialcor")
Arguments
| y | The values of the outcome. | 
| X | The design matrix. If the covariate of interest is included in  | 
| X1 | n-vector with the (1-dimensional) covariate of interest. 
 | 
| nperm | The number of random permutations (or sign-flipping maps) used by the test | 
| lambda | The penalty used in the ridge regressions. Default is  | 
| flip | Default is "FALSE", which means that permutation is used. If "TRUE", then sign-flipping is used. | 
| statistic | The type of statistic that is used within the permutation test. 
Either the partial correlation ( | 
| nfolds | The number of folds used in the cross-validation (in case lambda is determined using cross-validation). | 
Value
A two-sided p-value.
Examples
set.seed(5193)
n=30
X <- matrix(nr=n,nc=60,rnorm(n*60)) 
y <- X[,1]+X[,2]+X[,3] + rnorm(n,mean=0)   #H0: first coefficient=0. So H0 is false
FLhd(y, X,  nperm=2000, lambda=100,flip="FALSE", statistic="partialcor")
Permutation test based on double residualization
Description
Provides a class of tests for testing in high-dimensional linear models. The tests are robust against heteroscedasticity and non-normality. They often provide good type I error control even under anti-sparsity.
Usage
  doubleres(y,X,X1,nperm=2E4,lambda="lambda.min",flip="FALSE",nfolds=10)
Arguments
| y | The values of the outcome. | 
| X | The design matrix. 
If the covariate of interest is included in  | 
| X1 | n-vector with the (1-dimensional) covariate of interest.
 | 
| nperm | The number of random permutations (or sign-flipping maps) used by the test | 
| lambda | The penalty used in the ridge regressions. Default is  | 
| flip | Default is "FALSE", which means that permutation is used. If "TRUE", then sign-flipping is used. | 
| nfolds | The number of folds used in the cross-validation (in case lambda is determined using cross-validation). | 
Value
A two-sided p-value.
Examples
set.seed(5193)
n=30
X <- matrix(nr=n,nc=60,rnorm(n*60)) 
y <- X[,1]+X[,2]+X[,3] + rnorm(n,mean=0)   #H0: first coefficient=0. So H0 is false
doubleres(y, X, nperm=2000, lambda=100,flip="FALSE")