The Inverse G-Wishart Distribution and Variational Message Passing

20 May 2020L. MaestriniM. P. Wand

Message passing on a factor graph is a powerful paradigm for the coding of approximate inference algorithms for arbitrarily graphical large models. The notion of a factor graph fragment allows for compartmentalization of algebra and computer code... (read more)

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