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hetcorFS (version 1.0.1)

Unsupervised Feature Selection using the Heterogeneous Correlation Matrix

Description

Unsupervised multivariate filter feature selection using the UFS-rHCM or UFS-cHCM algorithms based on the heterogeneous correlation matrix (HCM). The HCM consists of Pearson's correlations between numerical features, polyserial correlations between numerical and ordinal features, and polychoric correlations between ordinal features. Tortora C., Madhvani S., Punzo A. (2025). "Designing unsupervised mixed-type feature selection techniques using the heterogeneous correlation matrix." International Statistical Review . This work was supported by the National Science foundation NSF Grant N 2209974 (Tortora) and by the Italian Ministry of University and Research (MUR) under the PRIN 2022 grant number 2022XRHT8R (CUP: E53D23005950006), as part of ‘The SMILE Project: Statistical Modelling and Inference to Live the Environment’, funded by the European Union – Next Generation EU (Punzo).

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Version

Install

install.packages('hetcorFS')

Monthly Downloads

125

Version

1.0.1

License

GPL-2

Maintainer

Cristina Tortora

Last Published

November 24th, 2025

Functions in hetcorFS (1.0.1)

HCPM

Heterogeneous correlation and p-value matrices
ESI

Employee Satisfaction Index (ESI) Data Set
JaccardRate

Jaccard Rate
FS_barplot

Feature importance bar plot
RedRate

Redundancy Rate
UFS

Unsupervised Feature Selection