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Source: mlpy
Section: python
Priority: optional
Maintainer: NeuroDebian Team <team@neuro.debian.net>
Uploaders: Yaroslav Halchenko <debian@onerussian.com>, Michael Hanke <michael.hanke@gmail.com>
Build-Depends: cdbs, debhelper (>= 5.0.38), libgsl0-dev, python-all-dev (>= 2.4), python-support (>= 0.6), python-numpy, python-sphinx, texlive, texlive-latex-extra, help2man
Standards-Version: 3.9.0
Homepage: https://mlpy.fbk.eu/
Vcs-Browser: http://git.debian.org/?p=pkg-exppsy/mlpy.git
Vcs-Git: git://git.debian.org/git/pkg-exppsy/mlpy.git
Package: python-mlpy
Architecture: all
Depends: ${misc:Depends}, ${python:Depends}, python, python-numpy, python-mlpy-lib(>= ${source:Version})
Provides: ${python:Provides}
XB-Python-Version: ${python:Versions}
Suggests: python-mvpa
Description: high-performance Python package for predictive modeling
mlpy provides high level procedures that support, with few lines of
code, the design of rich Data Analysis Protocols (DAPs) for
preprocessing, clustering, predictive classification and feature
selection. Methods are available for feature weighting and ranking,
data resampling, error evaluation and experiment landscaping.
.
mlpy includes: SVM (Support Vector Machine), KNN (K Nearest
Neighbor), FDA, SRDA, PDA, DLDA (Fisher, Spectral Regression,
Penalized, Diagonal Linear Discriminant Analysis) for classification
and feature weighting, I-RELIEF, DWT and FSSun for feature weighting,
*RFE (Recursive Feature Elimination) and RFS (Recursive Forward
Selection) for feature ranking, DWT, UWT, CWT (Discrete, Undecimated,
Continuous Wavelet Transform), KNN imputing, DTW (Dynamic Time
Warping), Hierarchical Clustering, k-medoids, Resampling Methods,
Metric Functions, Canberra indicators.
Package: python-mlpy-doc
Architecture: all
Section: doc
Depends: ${misc:Depends}, libjs-jquery
Suggests: python-mlpy
Description: documention and examples for mlpy
mlpy provides high level procedures that support, with few lines of
code, the design of rich Data Analysis Protocols (DAPs) for
preprocessing, clustering, predictive classification and feature
selection. Methods are available for feature weighting and ranking,
data resampling, error evaluation and experiment landscaping.
.
This package provides user documentation for mlpy in various formats
(HTML, PDF).
Package: python-mlpy-lib
Architecture: any
Depends: ${misc:Depends}, ${shlibs:Depends}, ${python:Depends}, python-numpy
Provides: ${python:Provides}
XB-Python-Version: ${python:Versions}
Description: low-level implementations and bindings for mlpy
This is an add-on package for the mlpy providing compiled core functionality.
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