-
Block Neural Autoregressive Flow
-
Sum-of-Squares Polynomial Flows
Priyank Jaini, Kira Selby and Yaoliang Yu.
-
Inverting Deep Generative models, One layer at a time
Qi Lei, Ajil Jalal, Inderjit Dhillon and Alexandros Dimakis.
-
Normalizing flows for novelty detection in industrial time series data
-
Embarassingly Parallel MCMC using Real NVP
Diego Mesquita, Paul Blomstedt and Samuel Kaski.
-
Benchmarking Invertible Architectures on Inverse Problems
Jakob Kruse, Lynton Ardizzone and Ullrich Köthe.
-
Residual Flows: Unbiased Generative Modeling with Norm-Learned i-ResNets
-
PRECOG: PREdictions Conditioned On Goals in Visual Multi-Agent Scenarios
-
Improving Exploration in Soft-Actor-Critic with Normalizing Flows Policies
Patrick Nadeem Ward, Ariella Smofsky and Avishek Joey Bose.
-
JacNet: Learning Functions with Structured Jacobian
Safwan Hossain and Jonathan Lorraine.
-
Boosting Trust Region Policy Optimization with Normalizing Flows Policy
Yunhao Tang and Shipra Agrawal.
-
Optimal Domain Translation
Emmanuel de Bézenac, Ibrahim Ayed and Patrick Gallinari.
-
Structured Output Learning with Conditional Generative Flows
-
Cubic-Spline Flows
-
Information Theory in Density Destructors
-
Adversarial training of partially invertible variational autoencoders
Thomas Lucas, Konstantin Shmelkov, Kartheek Alahari, Cordelia Schmid and Jakob Verbeek.
-
VideoFlow: A Flow-Based Generative Model for Video
Manoj Kumar, Mohammad Babaeizadeh, Dumitru Erhan, Chelsea Finn, Sergey Levine, Laurent Dinh and Durk Kingma.
-
Monte Carlo Integration with Normalizing Flows
-
Semi-Conditional Normalizing Flows for Semi-Supervised Learning
Andrei Atanov, Alexandra Volokhova, Arsenii Ashukha, Ivan Sosnovik and Dmitry Vetrov.
-
Symmetric Convolutional Flow
-
Approximating exponential family models (not single distributions) with a two-network architecture
Sean Bittner and John Cunningham.
-
Covering up bias with Markov blankets: A post-hoc cure for attribute prior blindness
Vinay Prabhu, Dian Ang Yap and Alexandar Wang.
-
Neural Networks with Cheap Differential Operators
-
AlignFlow: Learning from multiple domains via normalizing flows
Aditya Grover, Christopher Chute, Rui Shu, Zhangjie Cao and Stefano Ermon.
-
Invertible ConvNets
Marc Finzi, Pavel Izmailov, Wesley Maddox, Polina Kirichenko and Andrew Wilson.
-
On Mixed Conditional FFJORD with Large-Batch Training
Tan Nguyen, Animesh Garg, Anjul Patney, Richard Baraniuk and Anima Anandkumar.
-
Semi-Supervised Learning with Normalizing Flows
Pavel Izmailov, Polina Kirichenko, Marc Finzi and Andrew Wilson.
-
Investigating the Impact of Normalizing Flows on Latent Variable Machine Translation
Michael Przystupa, Mark Schmidt and Muhammad Abdul-Mageed.
-
Improving Normalizing Flows via Better Orthogonal Parameterizations
Adam Golinski, Mario Lezcano-Casado and Tom Rainforth.
-
MinvNet: Building Invertible Neural Networks with Masked Convolutions
Yang Song, Chenlin Meng and Stefano Ermon.
-
Learning Generative Samplers using Relaxed Injective Flow
Abhishek Kumar, Ben Poole and Kevin Murphy.