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Releases: ayrna/orca

v1.3-JMLR

29 Jul 11:44
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This release corresponds to the version of the software accepted in Journal of Machine Learning Research

Changelog:

  • Reorganized folders and renamed scripts
  • Tutorials migrated to Jupyter notebooks
  • Added tests for code and tutorials
  • Added continuous integration with travis
  • Added datasets and table of dataset characteristics
  • Fixed language typos
  • Fixed hyperlinks in documentation
  • Refactored runAlgorithm to fitpredict
  • Tested on Octave 4.4
  • Easier installation process
  • Bugs corrected related to key/value parameters processing in several methods
  • Added different link functions to POM
  • Added new methods: LIBLINEAR and HPOLD
  • Added option to perform reports with the sum of generalization matrices
  • Suppressed most compilation warnings
  • Homogenize shape of matrix in model files
  • Parameter selection can be done from the API
  • INI files allow defining multiple experiments of different methods

v1.2

03 Jun 15:39
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News:

  • Bugs corrected related to key/value parameters processing in several methods
  • Added different link functions to POM
  • Added new methods: LIBLINEAR and HPOLD
  • Added option to do reports with the sum of generalization matrices
  • Suppressed compilation warnings
  • Homogenize shape of matrix in model files
  • Parameters selection can be done from the API
  • Refactor of fit/predict API
  • Added example to add new methods
  • Typos fixed in web and tutorials

v1.1

25 Jan 14:57
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  • Fixed several issues:
    • Fixed many errors.
    • RBF parameter is only allowed for KDLOR since it was not effective in other methods
    • Bugs with condor and ini files
    • Modified inifile to be case sensitive with keys.
    • Types defined in ini files have to match the object properties types.
  • Added Key/value parameteres for Algorithm constructors
  • Parameters validation are now completely done in Algorithm, there Experiments is now Algorithm type agnostic.
  • runAlgorithm receives and structure of parameters
  • Updated documentation with three tutorials
  • Added more example datasets
  • Added code and ini examples
  • Added NNPOM and NNOP methods.

v1.0

11 Dec 19:46
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First release with many errors corrected since the survey paper publication. The roadmap for version 1.0 is almost complete (https://github.com/ayrna/orca/wiki). Main new features:

  • Simplified installation
  • Instalation test scripts
  • INI format for experiments configuration
  • Ported to Octave, including parallelization
  • Ported to Windows
  • Adapted to last Matlab releases
  • Many error handling included
  • Algorithms API homogenization
  • Code cleaned and comments follow matlab style guide.