Skip to yearly menu bar Skip to main content


( events)   Timezone:  
Poster
Tue Aug 08 01:30 AM -- 05:00 AM (PDT) @ Gallery #109
Variational Boosting: Iteratively Refining Posterior Approximations
Andrew Miller · Nicholas J Foti · Ryan P. Adams

We propose a black-box variational inference method to approximate intractable distributions with an increasingly rich approximating class. Our method, variational boosting, iteratively refines an existing variational approximation by solving a sequence of optimization problems, allowing a trade-off between computation time and accuracy. We expand the variational approximating class by incorporating additional covariance structure and by introducing new components to form a mixture. We apply variational boosting to synthetic and real statistical models, and show that the resulting posterior inferences compare favorably to existing variational algorithms.