The R package sparsediscrim
provides a collection of sparse and regularized discriminant
analysis classifiers that are especially useful for when applied to
small-sample, high-dimensional data sets.
You can install the stable version on CRAN:
install.packages('sparsediscrim', dependencies = TRUE)
If you prefer to download the latest version, instead type:
library(devtools)
install_github('ramhiser/sparsediscrim')
The sparsediscrim
package features the following classifier (the R function
is included within parentheses):
- High-Dimensional Regularized Discriminant Analysis (
hdrda
) from Ramey et al. (2015)
The sparsediscrim
package also includes a variety of additional classifiers
intended for small-sample, high-dimensional data sets. These include:
Classifier | Author | R Function |
---|---|---|
Diagonal Linear Discriminant Analysis | Dudoit et al. (2002) | dlda |
Diagonal Quadratic Discriminant Analysis | Dudoit et al. (2002) | dqda |
Shrinkage-based Diagonal Linear Discriminant Analysis | Pang et al. (2009) | sdlda |
Shrinkage-based Diagonal Quadratic Discriminant Analysis | Pang et al. (2009) | sdqda |
Shrinkage-mean-based Diagonal Linear Discriminant Analysis | Tong et al. (2012) | smdlda |
Shrinkage-mean-based Diagonal Quadratic Discriminant Analysis | Tong et al. (2012) | smdqda |
Minimum Distance Empirical Bayesian Estimator (MDEB) | Srivistava and Kubokawa (2007) | mdeb |
Minimum Distance Rule using Modified Empirical Bayes (MDMEB) | Srivistava and Kubokawa (2007) | mdmeb |
Minimum Distance Rule using Moore-Penrose Inverse (MDMP) | Srivistava and Kubokawa (2007) | mdmp |
We also include modifications to Linear Discriminant Analysis (LDA) with regularized covariance-matrix estimators:
- Moore-Penrose Pseudo-Inverse (
lda_pseudo
) - Schafer-Strimmer estimator (
lda_schafer
) - Thomaz-Kitani-Gillies estimator (
lda_thomaz
)