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PIMSA 0.1 – Pathway Informed Model Selection Algorithm

PIMSA 0.1

:: DESCRIPTION

PIMSA is an implementation of a reversible jump MCMC algorithm that samples across the space of all possible models in the context of variable selection.

::DEVELOPER

Gary K. Chen, Ph.D.

:: SCREENSHOTS

N/A

:: REQUIREMENTS

  • Linux
  • C++ compiler

:: DOWNLOAD

   PIMSA

:: MORE INFORMATION

Posted on 2020/04/062020/04/06Author adminCategories Genetics & PedigreeTags Model, Pathway, PIMSA, Selection

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