Fedora 18 Update: tapkee-1.0-1.fc18

updates at fedoraproject.org updates at fedoraproject.org
Wed Oct 2 06:29:56 UTC 2013


--------------------------------------------------------------------------------
Fedora Update Notification
FEDORA-2013-17421
2013-09-23 22:47:26
--------------------------------------------------------------------------------

Name        : tapkee
Product     : Fedora 18
Version     : 1.0
Release     : 1.fc18
URL         : http://tapkee.lisitsyn.me/
Summary     : C++ template library for efficient dimension reduction
Description :
Tapkee is a C++ template library for dimensionality reduction with
some bias on spectral methods.  The Tapkee origins from the code
developed during GSoC 2011 as the part of the Shogun machine learning
toolbox.  The project aim is to provide efficient and flexible
standalone library for dimensionality reduction which can be easily
integrated to existing codebases.  Tapkee leverages capabilities of
effective Eigen3 linear algebra library and optionally makes use of
the ARPACK eigensolver.  The library uses CoverTree and VP-tree
data-structures to compute nearest neighbors.  To achieve greater
flexibility we provide a callback interface which decouples dimension
reduction algorithms from the data representation and storage schemes.

Tapkee provides implementations of the following dimension reduction
methods:

  * Locally Linear Embedding and Kernel Locally Linear Embedding
    (LLE/KLLE)
  * Neighborhood Preserving Embedding (NPE)
  * Local Tangent Space Alignment (LTSA)
  * Linear Local Tangent Space Alignment (LLTSA)
  * Hessian Locally Linear Embedding (HLLE)
  * Laplacian eigenmaps
  * Locality Preserving Projections
  * Diffusion map
  * Isomap and landmark Isomap
  * Multidimensional scaling and landmark Multidimensional scaling
    (MDS/lMDS)
  * Stochastic Proximity Embedding (SPE)
  * PCA and randomized PCA
  * Kernel PCA (kPCA)
  * Random projection
  * Factor analysis
  * t-SNE
  * Barnes-Hut-SNE

--------------------------------------------------------------------------------
Update Information:

Tapkee is a C++ template library for dimensionality reduction with some bias on spectral methods. The Tapkee origins from the code developed during GSoC 2011 as the part of the Shogun machine learning toolbox. The project aim is to provide efficient and flexible standalone library for dimensionality reduction which can be easily integrated to existing codebases. Tapkee leverages capabilities of effective Eigen3 linear algebra library and optionally makes use of the ARPACK eigensolver. The library uses CoverTree and VP-tree data-structures to compute nearest neighbors. To achieve greater flexibility we provide a callback interface which decouples dimension reduction algorithms from the data representation and storage schemes. Tapkee provides implementations of the following dimension reduction methods: * Locally Linear Embedding and Kernel Locally Linear Embedding (LLE/KLLE) * Neighborhood Preserving Embedding (NPE) * Local Tangent Space Alignment (LTSA) * Linear Local Tangent Space Alignment (LLTSA) * Hessian Locally Linear Embedding (HLLE) * Laplacian eigenmaps * Locality Preserving Projections * Diffusion map * Isomap and landmark Isomap * Multidimensional scaling and landmark Multidimensional scaling (MDS/lMDS) * Stochastic Proximity Embedding (SPE) * PCA and randomized PCA * Kernel PCA (kPCA) * Random projection * Factor analysis * t-SNE * Barnes-Hut-SNE
--------------------------------------------------------------------------------
References:

  [ 1 ] Bug #1010565 - Review Request: tapkee - C++ template library for efficient dimension reduction
        https://bugzilla.redhat.com/show_bug.cgi?id=1010565
--------------------------------------------------------------------------------

This update can be installed with the "yum" update program.  Use 
su -c 'yum update tapkee' at the command line.
For more information, refer to "Managing Software with yum",
available at http://docs.fedoraproject.org/yum/.

All packages are signed with the Fedora Project GPG key.  More details on the
GPG keys used by the Fedora Project can be found at
https://fedoraproject.org/keys
--------------------------------------------------------------------------------


More information about the package-announce mailing list