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ROADMAP.md

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ADAM

Roadmap

###Planned features

  • update core FEM functions to have a consistent API
  • improved topomap plotting
  • FEM tutorial
  • improve statistical testing using prevalence inference, addressing problems of t-testing on MVPA data (Allefeld, C., Görgen, K., & Haynes, J.-D. (2016). Valid population inference for information-based imaging: From the second-level t-test to prevalence inference. NeuroImage, 141, 378–392.)
  • implement cluster based permutation for topomaps over time (not just space)
  • allow oversampling of trigger values within a class (under consideration)
  • enable correlation of distance to boundary scores with reaction time, confidence etc.
  • look into regularization
  • look into better whitening / noise normalization for FEMs

###V1.0.0 is the current version

###Implemented prior to V1.0.0

  • whitening (by default on for FEMs, not for BDMs as these use LDA)
  • better implementation of class balancing using ADASYN to oversample (Haibo He, Yang Bai, Garcia, E. A., & Shutao Li. (2008). ADASYN: Adaptive synthetic sampling approach for imbalanced learning (pp. 1322–1328). Presented at the 2008 IEEE International Joint Conference on Neural Networks (IJCNN 2008 - Hong Kong), IEEE.)
  • implemented AUC (Area Under the Curve) as the default performance measure (on top of balanced accuracy, d' and hr-far).
  • updated all core BDM functions to have a (more or less) consistent API
  • all core functions are now pre-pended with adam_
  • BDM tutorial (1st level, 2nd level, plotting) with example data