April 17, 2023, 8:02 p.m. | Javier Burroni, Justin Domke, Daniel Sheldon

cs.LG updates on arXiv.org arxiv.org

We present a novel approach for black-box VI that bypasses the difficulties
of stochastic gradient ascent, including the task of selecting step-sizes. Our
approach involves using a sequence of sample average approximation (SAA)
problems. SAA approximates the solution of stochastic optimization problems by
transforming them into deterministic ones. We use quasi-Newton methods and line
search to solve each deterministic optimization problem and present a heuristic
policy to automate hyperparameter selection. Our experiments show that our
method simplifies the VI problem …

approximation arxiv automate box gradient hyperparameter line novel optimization performance policy search solution stochastic

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