Improving Automated Variational Inference with Normalizing Flows by Stefan Webb, J. P. Chen, Martin Jankowiak and Noah Goodman
We describe a framework for performing automatic Bayesian inference in probabilistic programs with fixed structure. Our framework takes a probabilistic program with fixed structure as input and outputs a learnt variational distribution approximating the posterior. For this purpose, we exploit recent advances in representing distributions with neural networks. We implement our approach in the Pyro probabilistic programming language, and validate it on a diverse collection of Bayesian regression models translated from Stan, showing improved inference and predictive performance relative to the existing state-of-the-art in automated inference for this class of models.
Follow @NuitBlog or join the CompressiveSensing Reddit, the Facebook page, the Compressive Sensing group on LinkedIn or the Advanced Matrix Factorization group on LinkedIn
Liked this entry ? subscribe to Nuit Blanche's feed, there's more where that came from. You can also subscribe to Nuit Blanche by Email.
Other links:
Paris Machine Learning: Meetup.com||@Archives||LinkedIn||Facebook|| @ParisMLGroup< br/> About LightOn: Newsletter ||@LightOnIO|| on LinkedIn || on CrunchBase || our Blog
About myself: LightOn || Google Scholar || LinkedIn ||@IgorCarron ||Homepage||ArXiv
No comments:
Post a Comment