Variational Bayes: A report on approaches and applications
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Deep neural networks have achieved impressive results on a wide variety of tasks. However, quantifying uncertainty in the network's output is a challenging task. Bayesian models offer a mathematical framework to reason about model uncertainty. Variational methods have been used for approximating intractable integrals that arise in Bayesian inference for neural networks. In this report, we review the major variational inference concepts pertinent to Bayesian neural networks and compare various approximation methods used in literature. We also talk about the applications of variational bayes in Reinforcement learning and continual learning.
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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.
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