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Stability Selection and Consensus Clustering in R: The R Package sharp

  • Barbara Bodinier
  • , Sabrina Rodrigues
  • , Maryam Karimi
  • , Sarah Filippi
  • , Julien Chiquet
  • , Marc Chadeau-Hyam
  • Imperial College London
  • St Mary's Hospital
  • INSERM U869
  • CNRS-AgroParisTech Université Paris-Sud-Paris Saclay Orsay

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Résumé

The R package sharp (Stability-enHanced Approaches using Resampling Procedures) provides an integrated framework for stability-enhanced variable selection, graphical modeling and clustering. In stability selection, a feature selection algorithm is combined with a resampling technique to estimate feature selection probabilities. Features with selection proportions above a threshold are considered stably selected. Similarly, a clustering algorithm is applied on multiple subsamples of items to compute co-membership proportions in consensus clustering. The consensus clusters are obtained by clustering using co-membership proportions as a measure of similarity. We calibrate the hyper-parameters of stability selection (or consensus clustering) jointly by maximizing a consensus score calculated under the null hypothesis of equiprobability of selection (or co-membership), which characterizes instability. The package offers flexibility in the modeling, includes diagnostic and visualization tools, and allows for parallelization.

langue originaleAnglais
Pages (de - à)1-27
Nombre de pages27
journalJournal of Statistical Software
Volume112
Numéro de publication5
Les DOIs
étatPublié - 1 janv. 2025
Modification externeOui

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