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rrcovHD
:
Robust Multivariate Methods for High Dimensional DataThe package rrcovHD
provides robust multivariate methods
for high dimensional data including outlier detection (Filzmoser and
Todorov (2013) doi:10.1016/j.ins.2012.10.017), robust sparse PCA (Croux
et al. (2013) doi:10.1080/00401706.2012.727746, Todorov and Filzmoser
(2013) doi:10.1007/978-3-642-33042-1_31), robust PLS (Todorov
and Filzmoser (2014) doi:10.17713/ajs.v43i4.44), and robust sparse
classification (Ortner et al. (2020) doi:10.1007/s10618-019-00666-8).
The rrcovHD
package is on CRAN (The Comprehensive R
Archive Network) and the latest release can be easily installed using
the command
install.packages("rrcovHD")
library(rrcovNA)
To install the latest stable development version from GitHub, you can pull this repository and install it using
## install.packages("remotes")
remotes::install_github("valentint/rrcovHD")
Of course, if you have already installed remotes
, you
can skip the first line (I have commented it out).
This is a basic example which shows you if the package is properly installed:
library(rrcovHD)
#> Loading required package: rrcov
#> Loading required package: robustbase
#> Scalable Robust Estimators with High Breakdown Point (version 1.7-5)
#> Robust Multivariate Methods for High Dimensional Data (version 0.2-7)
data(pottery)
dim(pottery) # 27 observations in 2 classes, 6 variables
#> [1] 27 7
head(pottery)
#> SI AL FE MG CA TI origin
#> 1 55.8 14.0 10.2 4.9 5.0 0.88 Attic
#> 2 51.2 12.5 10.1 4.4 4.8 0.86 Attic
#> 3 57.1 14.0 8.3 6.4 11.2 0.75 Attic
#> 4 53.8 13.1 9.3 4.9 6.6 0.81 Attic
#> 5 59.4 14.8 9.8 5.5 5.4 0.89 Attic
#> 6 56.2 14.0 9.9 4.9 5.4 0.89 Attic
## Build the SIMCA model. Use RSimca for a robust version
<- RSimca(origin~., data=pottery)
rs
rs#> Call:
#> RSimca(origin ~ ., data = pottery)
#>
#> Prior Probabilities of Groups:
#> Attic Eritrean
#> 0.4814815 0.5185185
#>
#> Pca objects for Groups:
#>
#> Call:
#> PcaHubert(x = class, k = k[i], kmax = kmax[i], trace = trace)
#> Importance of components:
#> PC1 PC2
#> Standard deviation 5.2672 0.8564
#> Proportion of Variance 0.7186 0.1804
#> Cumulative Proportion 0.7186 0.8990
#>
#> Call:
#> PcaHubert(x = class, k = k[i], kmax = kmax[i], trace = trace)
#> Importance of components:
#> PC1
#> Standard deviation 3.2934
#> Proportion of Variance 0.8102
#> Cumulative Proportion 0.8102
summary(rs)
#>
#> Call:
#> RSimca(formula = origin ~ ., data = pottery)
#>
#> Prior Probabilities of Groups:
#> Attic Eritrean
#> 0.4814815 0.5185185
#>
#> Pca objects for Groups:
#>
#> Call:
#> PcaHubert(x = class, k = k[i], kmax = kmax[i], trace = trace)
#> Importance of components:
#> PC1 PC2
#> Standard deviation 5.2672 0.8564
#> Proportion of Variance 0.7186 0.1804
#> Cumulative Proportion 0.7186 0.8990
#>
#> Call:
#> PcaHubert(x = class, k = k[i], kmax = kmax[i], trace = trace)
#> Importance of components:
#> PC1
#> Standard deviation 3.2934
#> Proportion of Variance 0.8102
#> Cumulative Proportion 0.8102
If you experience any bugs or issues or if you have any suggestions for additional features, please submit an issue via the Issues tab of this repository. Please have a look at existing issues first to see if your problem or feature request has already been discussed.
If you want to contribute to the package, you can fork this repository and create a pull request after implementing the desired functionality.
If you need help using the package, or if you are interested in collaborations related to this project, please get in touch with the package maintainer.
These binaries (installable software) and packages are in development.
They may not be fully stable and should be used with caution. We make no claims about them.
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