Timezone: »
Variational Auto-Encoders (VAE) have become very popular techniques to perform inference and learning in latent variable models as they allow us to leverage the rich representational power of neural networks to obtain flexible approximations of the posterior of latent variables as well as tight evidence lower bounds (ELBO). Com- bined with stochastic variational inference, this provides a methodology scaling to large datasets. However, for this methodology to be practically efficient, it is neces- sary to obtain low-variance unbiased estimators of the ELBO and its gradients with respect to the parameters of interest. While the use of Markov chain Monte Carlo (MCMC) techniques such as Hamiltonian Monte Carlo (HMC) has been previously suggested to achieve this [23, 26], the proposed methods require specifying reverse kernels which have a large impact on performance. Additionally, the resulting unbiased estimator of the ELBO for most MCMC kernels is typically not amenable to the reparameterization trick. We show here how to optimally select reverse kernels in this setting and, by building upon Hamiltonian Importance Sampling (HIS) [17], we obtain a scheme that provides low-variance unbiased estimators of the ELBO and its gradients using the reparameterization trick. This allows us to develop a Hamiltonian Variational Auto-Encoder (HVAE). This method can be re-interpreted as a target-informed normalizing flow [20] which, within our context, only requires a few evaluations of the gradient of the sampled likelihood and trivial Jacobian calculations at each iteration.
Author Information
Anthony Caterini (University of Oxford)
Arnaud Doucet (Oxford)
Dino Sejdinovic (University of Oxford)
More from the Same Authors
-
2021 : Entropic Issues in Likelihood-Based OOD Detection »
Anthony Caterini · Gabriel Loaiza-Ganem -
2021 : Entropic Issues in Likelihood-Based OOD Detection »
Anthony Caterini · Gabriel Loaiza-Ganem -
2022 : Spectral Diffusion Processes »
Angus Phillips · Thomas Seror · Michael Hutchinson · Valentin De Bortoli · Arnaud Doucet · Emile Mathieu -
2023 Poster: Trans-Dimensional Generative Modeling via Jump Diffusion Models »
Andrew Campbell · William Harvey · Christian Weilbach · Valentin De Bortoli · Thomas Rainforth · Arnaud Doucet -
2023 Poster: Diffusion Schrödinger Bridge Matching »
Yuyang Shi · Valentin De Bortoli · Andrew Campbell · Arnaud Doucet -
2023 Poster: Marginal Density Ratio for Off-Policy Evaluation in Contextual Bandits »
Muhammad Faaiz Taufiq · Arnaud Doucet · Rob Cornish · Jean-Francois Ton -
2023 Poster: Tree-Based Diffusion Schrödinger Bridge with Applications to Wasserstein Barycenters »
Maxence Noble · Valentin De Bortoli · Arnaud Doucet · Alain Durmus -
2023 Poster: A Unified Framework for U-Net Design and Analysis »
Christopher Williams · Fabian Falck · George Deligiannidis · Chris C Holmes · Arnaud Doucet · Saifuddin Syed -
2023 Poster: Alpha-divergence Variational Inference Meets Importance Weighted Auto-Encoders: Methodology and Asymptotics »
Kamélia Daudel · Joe Benton · Yuyang Shi · Arnaud Doucet -
2022 Spotlight: Lightning Talks 1A-4 »
Siwei Wang · Jing Liu · Nianqiao Ju · Shiqian Li · Eloïse Berthier · Muhammad Faaiz Taufiq · Arsene Fansi Tchango · Chen Liang · Chulin Xie · Jordan Awan · Jean-Francois Ton · Ziad Kobeissi · Wenguan Wang · Xinwang Liu · Kewen Wu · Rishab Goel · Jiaxu Miao · Suyuan Liu · Julien Martel · Ruobin Gong · Francis Bach · Chi Zhang · Rob Cornish · Sanmi Koyejo · Zhi Wen · Yee Whye Teh · Yi Yang · Jiaqi Jin · Bo Li · Yixin Zhu · Vinayak Rao · Wenxuan Tu · Gaetan Marceau Caron · Arnaud Doucet · Xinzhong Zhu · Joumana Ghosn · En Zhu -
2022 Spotlight: Conformal Off-Policy Prediction in Contextual Bandits »
Muhammad Faaiz Taufiq · Jean-Francois Ton · Rob Cornish · Yee Whye Teh · Arnaud Doucet -
2022 Poster: Conformal Off-Policy Prediction in Contextual Bandits »
Muhammad Faaiz Taufiq · Jean-Francois Ton · Rob Cornish · Yee Whye Teh · Arnaud Doucet -
2022 Poster: A Continuous Time Framework for Discrete Denoising Models »
Andrew Campbell · Joe Benton · Valentin De Bortoli · Thomas Rainforth · George Deligiannidis · Arnaud Doucet -
2022 Poster: Score-Based Diffusion meets Annealed Importance Sampling »
Arnaud Doucet · Will Grathwohl · Alexander Matthews · Heiko Strathmann -
2022 Poster: A Multi-Resolution Framework for U-Nets with Applications to Hierarchical VAEs »
Fabian Falck · Christopher Williams · Dominic Danks · George Deligiannidis · Christopher Yau · Chris C Holmes · Arnaud Doucet · Matthew Willetts -
2022 Poster: Riemannian Score-Based Generative Modelling »
Valentin De Bortoli · Emile Mathieu · Michael Hutchinson · James Thornton · Yee Whye Teh · Arnaud Doucet -
2022 Poster: Towards Learning Universal Hyperparameter Optimizers with Transformers »
Yutian Chen · Xingyou Song · Chansoo Lee · Zi Wang · Richard Zhang · David Dohan · Kazuya Kawakami · Greg Kochanski · Arnaud Doucet · Marc'Aurelio Ranzato · Sagi Perel · Nando de Freitas -
2021 : Spotlight Talk 9 »
Anthony Caterini -
2021 Poster: Rectangular Flows for Manifold Learning »
Anthony Caterini · Gabriel Loaiza-Ganem · Geoff Pleiss · John Cunningham -
2021 Poster: BayesIMP: Uncertainty Quantification for Causal Data Fusion »
Siu Lun Chau · Jean-Francois Ton · Javier González · Yee Teh · Dino Sejdinovic -
2021 Poster: Deconditional Downscaling with Gaussian Processes »
Siu Lun Chau · Shahine Bouabid · Dino Sejdinovic -
2019 Poster: Hyperparameter Learning via Distributional Transfer »
Ho Chung Law · Peilin Zhao · Leung Sing Chan · Junzhou Huang · Dino Sejdinovic -
2019 Poster: Augmented Neural ODEs »
Emilien Dupont · Arnaud Doucet · Yee Whye Teh -
2018 Poster: Causal Inference via Kernel Deviance Measures »
Jovana Mitrovic · Dino Sejdinovic · Yee Whye Teh -
2018 Spotlight: Causal Inference via Kernel Deviance Measures »
Jovana Mitrovic · Dino Sejdinovic · Yee Whye Teh -
2018 Poster: Variational Learning on Aggregate Outputs with Gaussian Processes »
Ho Chung Law · Dino Sejdinovic · Ewan Cameron · Tim Lucas · Seth Flaxman · Katherine Battle · Kenji Fukumizu -
2017 Poster: Filtering Variational Objectives »
Chris Maddison · John Lawson · George Tucker · Nicolas Heess · Mohammad Norouzi · Andriy Mnih · Arnaud Doucet · Yee Teh -
2017 Poster: Testing and Learning on Distributions with Symmetric Noise Invariance »
Ho Chung Law · Christopher Yau · Dino Sejdinovic -
2017 Poster: Clone MCMC: Parallel High-Dimensional Gaussian Gibbs Sampling »
Andrei-Cristian Barbos · Francois Caron · Jean-François Giovannelli · Arnaud Doucet -
2015 Workshop: Scalable Monte Carlo Methods for Bayesian Analysis of Big Data »
Babak Shahbaba · Yee Whye Teh · Max Welling · Arnaud Doucet · Christophe Andrieu · Sebastian J. Vollmer · Pierre Jacob -
2015 Poster: Expectation Particle Belief Propagation »
Thibaut Lienart · Yee Whye Teh · Arnaud Doucet -
2014 Poster: Asynchronous Anytime Sequential Monte Carlo »
Brooks Paige · Frank Wood · Arnaud Doucet · Yee Whye Teh -
2014 Oral: Asynchronous Anytime Sequential Monte Carlo »
Brooks Paige · Frank Wood · Arnaud Doucet · Yee Whye Teh -
2009 Poster: Bayesian Nonparametric Models on Decomposable Graphs »
Francois Caron · Arnaud Doucet -
2009 Tutorial: Sequential Monte-Carlo Methods »
Arnaud Doucet · Nando de Freitas -
2007 Spotlight: Bayesian Policy Learning with Trans-Dimensional MCMC »
Matthew Hoffman · Arnaud Doucet · Nando de Freitas · Ajay Jasra -
2007 Poster: Bayesian Policy Learning with Trans-Dimensional MCMC »
Matthew Hoffman · Arnaud Doucet · Nando de Freitas · Ajay Jasra