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Library for computing log-determinants and sampling from large Gaussian distributions. No longer maintained. Will be integrated ino SHOGUN (https://github.com/shogun-toolbox/shogun)
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lambday/KRYLSTAT
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Copyright 2012 Erlend Aune THIS LIBRARY IS NO LONGER MAINTAINED. It will be integrated into SHOGUN: (https://github.com/shogun-toolbox/shogun) and future progress will be found there. The Krylov statistics library (KRYLSTAT) is free C++ software under the LGPL license. It is designed to facilitate sampling from high dimensional Gaussian distributions using rational approximations and Krylov methods and computing log-determinants using the same methods with the addition of graph colouring. The code depends on ARPREC for computing high-precision Jacobi elliptic functions. The libRatApp.a-file includes this, but the header file for arprec is needed. The library can be found on http://crd.lbl.gov/~dhbailey/mpdist/. It depends on Eigen (http://eigen.tuxfamily.org/index.php) for blas-type functions and sparse matrix-vector products. On ColPack (http://www.cscapes.org/coloringpage/software.htm) for graph colouring. On boost (http://www.boost.org/) for computing IID normal samples. and on cusp (http://code.google.com/p/cusp-library/) for GPU implementations. Additionally, OpenMP is required for parallel computations. Citing this software may be done by citing one or both of the following bibtex entries: @ARTICLE{aunsimp_par_est, author = {Erlend Aune and Daniel P. Simpson and Jo Eidsvik}, title = {Parameter estimation in high dimensional Gaussian distributions}, journal = {Statistics and Computing}, year = {2013}, volume = {To appear}, pages = {NA}, } @ARTICLE{aun_samp_stco_2012, author = {Erlend Aune and Jo Eidsvik and Yvo Pokern}, title = {terative Numerical Methods for Sampling from High Dimensional Gaussian Distributions}, journal = {Statistics and Computing}, year = {2012}, volume = {To appear}, pages = {NA} }
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Library for computing log-determinants and sampling from large Gaussian distributions. No longer maintained. Will be integrated ino SHOGUN (https://github.com/shogun-toolbox/shogun)
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GPL-3.0, LGPL-3.0 licenses found
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GPL-3.0
COPYING.GPL
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