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arxiv: 1901.08431 · v4 · pith:WQTMVES4new · submitted 2019-01-24 · 💻 cs.LG · stat.ML

Provable Smoothness Guarantees for Black-Box Variational Inference

classification 💻 cs.LG stat.ML
keywords guaranteesblack-boxconvergencedistributiongivesinferenceobjectiveparameters
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Black-box variational inference tries to approximate a complex target distribution though a gradient-based optimization of the parameters of a simpler distribution. Provable convergence guarantees require structural properties of the objective. This paper shows that for location-scale family approximations, if the target is M-Lipschitz smooth, then so is the objective, if the entropy is excluded. The key proof idea is to describe gradients in a certain inner-product space, thus permitting use of Bessel's inequality. This result gives insight into how to parameterize distributions, gives bounds the location of the optimal parameters, and is a key ingredient for convergence guarantees.

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