CMA
This package provides a comprehensive collection of various microarray-based classification algorithms both from Machine Learning and Statistics. Variable Selection, Hyperparameter tuning, Evaluation and Comparison can be performed combined or stepwise in a user-friendly environment.
- Bioconductor
- https://bioconductor.org/packages/CMA
Source attribution
- Bioconductor — CMA
Related resources
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