Bioconductor-mirror/ClassifyR: A framework for two-class classification problems, with applications to differential variability and differential distribution testing

The software formalises a framework for classification in R. There are four stages; Data transformation, feature selection, classifier training, and prediction. The requirements of variable types and names are fixed, but specialised variables for functions can also be provided. The classification framework is wrapped in a driver loop, that reproducibly carries out a number of cross-validation schemes. Functions for differential expression, differential variability, and differential distribution are included. Additional functions may be developed by the user, by creating an interface to the framework.

Getting started

Package details

AuthorDario Strbenac, John Ormerod, Graham Mann, Jean Yang
Bioconductor views Classification Survival
MaintainerDario Strbenac <[email protected]>
Package repositoryView on GitHub
Installation Install the latest version of this package by entering the following in R:
Bioconductor-mirror/ClassifyR documentation built on July 1, 2017, 4:09 a.m.