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Releases: ncaptier/stabilized-ica

PyPI release version 2.0.0

02 Nov 15:20
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Stabilized-ica is now compatible with scikit-learn API, meaning that you can use the base class as a sklearn transformer and include it in complex ML pipelines (see this tutorial for an illustration).

sica.annotate and sica.singlecell modules have been removed from stabilized-ica and integrated into a complementary python toolbox called sica-omics . stabilized-ica no longer contains dependencies specific to omics data analysis.

Fixed bugs:

  • svd_solver default value (parameter of sica._whitening.whitening) was changed from full (i.e full svd decomposition) to auto (i.e selection of most efficient solver for the size of the given dataset). This significantly speeds up the computation for large datasets.

New features:

  • sica.base.MSTD has new fun and algorithm parameters so that the user can specify the ICA algorithm and the non-linearity function to use (for the previous version only algorithm = fastica_par and fun = 'logcosh' were available).

PyPI release version 1.1.0

22 Dec 10:57
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Release highlights :

  • Add bootstrap options for sica.base.StabilizedICA
  • Correct some bugs
  • Add new tutorials

Pre-release for v1.1.0

03 Nov 16:09
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Pre-release

Add bootstrap functionality for the stabilized ICA algorithm

First release on PyPi

25 Jun 09:00
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v1.0.1

Update setup.py

Pre-release of the whole package (for sanity check)

09 Jun 17:25
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v1.0.0-alpha

Update README.md