CMA (version 1.30.0)

ElasticNetCMA: Classfication and variable selection by the ElasticNet

Description

Zou and Hastie (2004) proposed a combined L1/L2 penalty for regularization and variable selection. The Elastic Net penalty encourages a grouping effect, where strongly correlated predictors tend to be in or out of the model together. The computation is done with the function glmpath from the package of the same name. The method can be used for variable selection alone, s. GeneSelection. For S4 method information, see ElasticNetCMA-methods.

Usage

ElasticNetCMA(X, y, f, learnind, norm.fraction = 0.1, alpha=0.5, models=FALSE, ...)

Arguments

X
Gene expression data. Can be one of the following:
  • A matrix. Rows correspond to observations, columns to variables.
  • A data.frame, when f is not missing (s. below).
  • An object of class ExpressionSet. note: by default, the predictors are scaled to have unit variance and zero mean. Can be changed by passing standardize = FALSE via the ... argument.

y
Class labels. Can be one of the following:
  • A numeric vector.
  • A factor.
  • A character if X is an ExpressionSet that specifies the phenotype variable.
  • missing, if X is a data.frame and a proper formula f is provided.

WARNING: The class labels will be re-coded to range from 0 to K-1, where K is the total number of different classes in the learning set.

f
A two-sided formula, if X is a data.frame. The left part correspond to class labels, the right to variables.
learnind
An index vector specifying the observations that belong to the learning set. May be missing; in that case, the learning set consists of all observations and predictions are made on the learning set.
norm.fraction
L1 Shrinkage intensity, expressed as the fraction of the coefficient L1 norm compared to the maximum possible L1 norm (corresponds to fraction = 1). Lower values correspond to higher shrinkage. Note that the default (0.1) need not produce good results, i.e. tuning of this parameter is recommended.
alpha
The elasticnet mixing parameter, with 0

(1-alpha)/2||beta||_2^2+alpha||beta||_1.

alpha=1 is the lasso penalty; Currently 'alpha<0.01' not="" reliable,="" unless="" you="" supply="" your="" own="" lambda sequence

models
a logical value indicating whether the model object shall be returned
...
Further arguments passed to the function glmpath from the package of the same name.

Value

clvarseloutput.

References

Zhou, H., Hastie, T. (2004). Regularization and variable selection via the elastic net. Journal of the Royal Statistical Society B, 67(2),301-320

Young-Park, M., Hastie, T. (2007) L1-regularization path algorithm for generalized linear models. Journal of the Royal Statistical Society B, 69(4), 659-677

See Also

compBoostCMA, dldaCMA, fdaCMA, flexdaCMA, gbmCMA, knnCMA, ldaCMA, LassoCMA, nnetCMA, pknnCMA, plrCMA, pls_ldaCMA, pls_lrCMA, pls_rfCMA, pnnCMA, qdaCMA, rfCMA, scdaCMA, shrinkldaCMA, svmCMA

Examples

Run this code
### load Golub AML/ALL data
data(golub)
### extract class labels
golubY <- golub[,1]
### extract gene expression
golubX <- as.matrix(golub[,-1])
### select learningset
ratio <- 2/3
set.seed(111)
learnind <- sample(length(golubY), size=floor(ratio*length(golubY)))
### run ElasticNet - penalized logistic regression (no tuning)
result <- ElasticNetCMA(X=golubX, y=golubY, learnind=learnind, norm.fraction = 0.2, alpha=0.5)
show(result)
ftable(result)
plot(result)

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