False discovery rate smoothing
Project description
False Discovery Rate Smoothing
==============================
The smoothfdr package provides an implementation of false dicovery rate smoothing as presented in the paper by Tansey et al. (arxiv link).
The documentation is still being written. To-do list includes:
1) Basic usage
2) Examples
- 2a) 1-d
- 2b) 2-d (rectangular)
- 2c) fMRI (non-rectangular)
All of these cases are covered by the code, but detailed examples still need to be written up.
==============================
The smoothfdr package provides an implementation of false dicovery rate smoothing as presented in the paper by Tansey et al. (arxiv link).
The documentation is still being written. To-do list includes:
1) Basic usage
2) Examples
- 2a) 1-d
- 2b) 2-d (rectangular)
- 2c) fMRI (non-rectangular)
All of these cases are covered by the code, but detailed examples still need to be written up.
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