Learn R Programming

missSOM (version 1.0.1)

Self-Organizing Maps with Built-in Missing Data Imputation

Description

The Self-Organizing Maps with Built-in Missing Data Imputation. Missing values are imputed and regularly updated during the online Kohonen algorithm. Our method can be used for data visualisation, clustering or imputation of missing data. It is an extension of the online algorithm of the 'kohonen' package. The method is described in the article "Self-Organizing Maps for Exploration of Partially Observed Data and Imputation of Missing Values" by S. Rejeb, C. Duveau, T. Rebafka (2022) .

Copy Link

Version

Install

install.packages('missSOM')

Monthly Downloads

269

Version

1.0.1

License

GPL (>= 2)

Maintainer

Sara Rejeb

Last Published

May 5th, 2022

Functions in missSOM (1.0.1)

yeast

Title Yeast cell-cycle data
wines

Wine data
imputeSOM

The Self-Organizing Maps with Built-in Missing Data Imputation.
somgrid

SOM-grid related functions
plot.missSOM

Plot missSOM object
summary.missSOM

Summary and print methods for missSOM objects
tricolor

Provides smooth unit colors for SOMs
object.distances

Calculate distances between object vectors in a SOM
missSOM

missSOM
map

Map data to a supervised or unsupervised SOM
nir

Title Near-infrared data with temperature effects