Thanks to everyone who expressed interest in working on this!
The purpose of this benchmarking project is to evaluate and compare a set of methods recently developed for using covariates to improve false discovery rate (FDR) estimation. Hopefully, at the end of this, we'll have a set of recommendations and/or a summary of relative strengths and weaknesses for each approach.
This "Roadmap" is a rough outline of how we can complete this project as a group.
If you have any suggestions/thoughts on the Roadmap, add them to issue #1!
- survey previous simulations and data sets (#2)
- agree on initial set of simulations and data sets (#4)
Tracking in issue(s) (not yet assigned).
- run simulations and real data analyses (sign-up!)
- review results as a group
- determine follow-up analyses and update Roadmap
Tracking in issue(s) (not yet assigned).
- agree on format (Rmd?) and target venue of write-up
- complete first draft and compile analyses (sign-up!)
- get full group approval on draft
- submit! 🎉