Project details for The Generalised Linear Models Inference and Estimation Toolbox

Logo The Generalised Linear Models Inference and Estimation Toolbox 1.4

by hn - October 19, 2011, 22:26:05 CET [ Project Homepage BibTeX Download ]

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The glm-ie toolbox contains scalable estimation routines for GLMs (generalised linear models) and SLMs (sparse linear models) as well as an implementation of a scalable convex variational Bayesian inference relaxation. We designed the glm-ie package to be simple, generic and easily expansible. Most of the code is written in Matlab including some MEX files. The code is fully compatible to both Matlab 7.x and GNU Octave 3.2.x.

Probabilistic classification, sparse linear modelling and logistic regression are covered in a common algorithmical framework allowing for both MAP estimation and approximate Bayesian inference.

Changes to previous version:

contributed by George Papandreou:

  • preconditioning support in the inf/linsolve_lcg.m CG routine.

  • @matConv2 and @matFD2 support different boundary conditions in deblurring

  • various mat/@*/diagFAtAFt.m support circulant preconditioning

  • bugfixes in nonnegativity option in pls/plsLBFGS.m and pen/penVBNorm.m when used together with EP

  • inf/diag_inv_sample.m, a Monte Carlo estimator

gfortran support to pls/lbfgsb/Makefile (thanks to Ernst Kloppenburg)

slight modification to mat/@matFFTN/mvm.m to make it more consistent

simple gradient solver using Barzilai-Borwein step size pls/plsBB.m

BibTeX Entry: Download
Supported Operating Systems: Agnostic, Platform Independent
Data Formats: Matlab, Octave
Tags: Approximate Inference, Sparse Learning, Logistic Regression
Archive: download here


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