Show simple item record

dc.contributor.authorWelandawe, Manushien_US
dc.contributor.authorRiis Anderson, Michaelen_US
dc.contributor.authorVehtari, Akien_US
dc.contributor.authorHuggins, Jonathanen_US
dc.date.accessioned2023-07-14T13:51:36Z
dc.date.available2023-07-14T13:51:36Z
dc.date.issued2022-03-29
dc.identifierhttps://arxiv.org/abs/2203.15945
dc.identifier.citationM. Welandawe, M. Riis Anderson, A. Vehtari, J. Huggins. 2022. "Robust, Automated, and Accurate Black-box Variational Inference" https://doi.org/10.48550/arXiv.2203.15945
dc.identifier.urihttps://hdl.handle.net/2144/46451
dc.description.abstractBlack-box variational inference (BBVI) now sees widespread use in machine learning and statistics as a fast yet flexible alternative to Markov chain Monte Carlo methods for approximate Bayesian inference. However, stochastic optimization methods for BBVI remain unreliable and require substantial expertise and hand-tuning to apply effectively. In this paper, we propose Robust, Automated, and Accurate BBVI (RAABBVI), a framework for reliable BBVI optimization. RAABBVI is based on rigorously justified automation techniques, includes just a small number of intuitive tuning parameters, and detects inaccurate estimates of the optimal variational approximation. RAABBVI adaptively decreases the learning rate by detecting convergence of the fixed--learning-rate iterates, then estimates the symmetrized Kullback--Leiber (KL) divergence between the current variational approximation and the optimal one. It also employs a novel optimization termination criterion that enables the user to balance desired accuracy against computational cost by comparing (i) the predicted relative decrease in the symmetrized KL divergence if a smaller learning were used and (ii) the predicted computation required to converge with the smaller learning rate. We validate the robustness and accuracy of RAABBVI through carefully designed simulation studies and on a diverse set of real-world model and data examples.en_US
dc.description.sponsorship5R01GM144963-02 - NIH/National Institute of General Medical Sciencesen_US
dc.description.urihttps://arxiv.org/pdf/2203.15945.pdf
dc.language.isoen_US
dc.relation.ispartofarXiv
dc.subjectMachine learningen_US
dc.subjectStatisticsen_US
dc.titleRobust, automated, and accurate black-box variational inferenceen_US
dc.typeFirst author draften_US
dc.date.updated2023-02-07T22:51:32Z
dc.description.versionFirst author draften_US
dc.identifier.doi10.48550/arXiv.2203.15945
pubs.publisher-urlhttps://arxiv.org/abs/2203.15945
dc.identifier.mycv796888


This item appears in the following Collection(s)

Show simple item record