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Companion Software for Bayesian Model Selection in Complex Linear Systems

This directory contains SBAMS, a package implementing Bayesian model selection in complex linear systems.

SBAMS is free software, you can redistribute it and/or modify it under the terms of the GNU General Public License.

The GNU General Public License does not permit this software to be redistributed in proprietary programs.

This software is distributed in the hope that it will be useful, but WITHOUT ANY WARRANTY; without even the implied warranty of MERCHANTABILITY or FITNESS FOR A PARTICULAR PURPOSE.

Download

The complete package can be downloaded from a single tar file in the download directory.

Source Code

We provide R and C++ source code to compute approximate Bayes factors for Multivariate Linear Regression Models (MVLR), the R code can be found in src/R/mvlr.R, and the c++ code is in files src/mcmc/MVLR.cc and src/mcmc/MVLR.h

The directory src/mcmc/ also include c++ implemented Markov Chain Monte Carlo (MCMC) algorithm to perform Bayesian model selection for the MVLR models.

Compilation and Installation

The compilation from the c++ source code requires the GNU c++ compiler (g++), GNU make and GNU scientific library (GSL) pre-installed in the compiling machine.

To compile the executable, run the following commands from the current directory:

 cd src/mcmc/
 make

Upon successful compilation, a binary executable "sbams_mvlr" should be produced.

Documentation and Example Data

A detailed documentation "sbams_mvlr.pdf" can be found in doc/ directory, we also include a simulated sample data set in the data/ directory.

Simulation Scripts and Data

We also include the scripts and data used for generating simulated data set in the paper. These files can be found in simulation/ directory.

Citation

Please cite the following for the usage of this software package:

Wen, X. "Bayesian Model Selection in Complex Linear Systems, as Illustrated in Genetic Association Studies", submit to Biometrics.