Convergence of projected stochastic natural gradient variational inference for various step size and sample or batch size schedules explores Theoretical convergence analysis of projected stochastic natural gradient variational inference under various step size and sample/batch size schedules, providing new non-asymptotic results. in Bayesian Inference.
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