AI RESEARCH

Semantic Variational Bayes Based on Semantic Information G Theory for Solving Latent Variables

arXiv CS.AI

ArXi:2408.13122v2 Announce Type: replace-cross The Variational Bayesian method (VB) is used to solve the probability distributions of latent variables with the minimum free energy criterion. This criterion is not easy to understand, and the computation is complex. For these reasons, this paper proposes the Semantic Variational Bayes' method (SVB). The Semantic Information Theory the author previously proposed extends the rate-distortion function R(D) to the rate-fidelity function R(G), where R is the minimum mutual information for given semantic mutual information G.