The paper introduces Semantic Variational Bayes (SVB) derived from the author's Semantic Information G Theory, claiming simpler computation than standard VB for latent variable inference via maximum G/R criterion.
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Semantic Variational Bayes Based on Semantic Information G Theory for Solving Latent Variables
The paper introduces Semantic Variational Bayes (SVB) derived from the author's Semantic Information G Theory, claiming simpler computation than standard VB for latent variable inference via maximum G/R criterion.