evaluomeR
github.com/neobernad/evaluomerEvaluating the reliability of your own metrics and the measurements done on your own datasets by analysing the stability and goodness of the classifications of such metrics.
Sourced from
- Bioconductor — evaluomeR
- GitHub — github.com/neobernad/evaluomer
Related resources
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