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Importance Weighting and Variational Inference

Importance Weighting and Variational Inference

27 August 2018
Justin Domke
Daniel Sheldon
ArXivPDFHTML

Papers citing "Importance Weighting and Variational Inference"

34 / 34 papers shown
Title
Towards Model-Agnostic Posterior Approximation for Fast and Accurate
  Variational Autoencoders
Towards Model-Agnostic Posterior Approximation for Fast and Accurate Variational Autoencoders
Yaniv Yacoby
Weiwei Pan
Finale Doshi-Velez
DRL
31
0
0
13 Mar 2024
U-Statistics for Importance-Weighted Variational Inference
U-Statistics for Importance-Weighted Variational Inference
Javier Burroni
Kenta Takatsu
Justin Domke
Daniel Sheldon
18
1
0
27 Feb 2023
Explainability as statistical inference
Explainability as statistical inference
Hugo Senetaire
Damien Garreau
J. Frellsen
Pierre-Alexandre Mattei
FAtt
29
4
0
06 Dec 2022
Alpha-divergence Variational Inference Meets Importance Weighted
  Auto-Encoders: Methodology and Asymptotics
Alpha-divergence Variational Inference Meets Importance Weighted Auto-Encoders: Methodology and Asymptotics
Kamélia Daudel
Joe Benton
Yuyang Shi
Arnaud Doucet
DRL
19
8
0
12 Oct 2022
GFlowNets and variational inference
GFlowNets and variational inference
Nikolay Malkin
Salem Lahlou
T. Deleu
Xu Ji
J. E. Hu
Katie Everett
Dinghuai Zhang
Yoshua Bengio
BDL
138
78
0
02 Oct 2022
Optimization of Annealed Importance Sampling Hyperparameters
Optimization of Annealed Importance Sampling Hyperparameters
Shirin Goshtasbpour
Fernando Perez-Cruz
37
1
0
27 Sep 2022
Compound Density Networks for Risk Prediction using Electronic Health
  Records
Compound Density Networks for Risk Prediction using Electronic Health Records
Yuxi Liu
S. Qin
Zhenhao Zhang
Wei Shao
BDL
21
9
0
02 Aug 2022
Markov Chain Score Ascent: A Unifying Framework of Variational Inference
  with Markovian Gradients
Markov Chain Score Ascent: A Unifying Framework of Variational Inference with Markovian Gradients
Kyurae Kim
Jisu Oh
Jacob R. Gardner
Adji Bousso Dieng
Hongseok Kim
BDL
37
8
0
13 Jun 2022
Variational Inference with Locally Enhanced Bounds for Hierarchical
  Models
Variational Inference with Locally Enhanced Bounds for Hierarchical Models
Tomas Geffner
Justin Domke
29
5
0
08 Mar 2022
Variational methods for simulation-based inference
Variational methods for simulation-based inference
Manuel Glöckler
Michael Deistler
Jakob H. Macke
32
47
0
08 Mar 2022
Multiple Importance Sampling ELBO and Deep Ensembles of Variational
  Approximations
Multiple Importance Sampling ELBO and Deep Ensembles of Variational Approximations
Oskar Kviman
Harald Melin
Hazal Koptagel
Victor Elvira
J. Lagergren
DRL
75
17
0
22 Feb 2022
Surrogate Likelihoods for Variational Annealed Importance Sampling
Surrogate Likelihoods for Variational Annealed Importance Sampling
M. Jankowiak
Du Phan
BDL
35
13
0
22 Dec 2021
Scalable Multi-Task Gaussian Processes with Neural Embedding of
  Coregionalization
Scalable Multi-Task Gaussian Processes with Neural Embedding of Coregionalization
Haitao Liu
Jiaqi Ding
Xinyu Xie
Xiaomo Jiang
Yusong Zhao
Xiaofang Wang
BDL
34
14
0
20 Sep 2021
MCMC Variational Inference via Uncorrected Hamiltonian Annealing
MCMC Variational Inference via Uncorrected Hamiltonian Annealing
Tomas Geffner
Justin Domke
33
34
0
08 Jul 2021
Variational Refinement for Importance Sampling Using the Forward
  Kullback-Leibler Divergence
Variational Refinement for Importance Sampling Using the Forward Kullback-Leibler Divergence
Ghassen Jerfel
S. Wang
Clara Fannjiang
Katherine A. Heller
Yi Ma
Michael I. Jordan
BDL
30
40
0
30 Jun 2021
Empirical Evaluation of Biased Methods for Alpha Divergence Minimization
Empirical Evaluation of Biased Methods for Alpha Divergence Minimization
Tomas Geffner
Justin Domke
30
9
0
13 May 2021
Improving Lossless Compression Rates via Monte Carlo Bits-Back Coding
Improving Lossless Compression Rates via Monte Carlo Bits-Back Coding
Yangjun Ruan
Karen Ullrich
Daniel de Souza Severo
James Townsend
Ashish Khisti
Arnaud Doucet
Alireza Makhzani
Chris J. Maddison
15
25
0
22 Feb 2021
Annealed Flow Transport Monte Carlo
Annealed Flow Transport Monte Carlo
Michael Arbel
A. G. Matthews
Arnaud Doucet
45
70
0
15 Feb 2021
A Tutorial on Sparse Gaussian Processes and Variational Inference
A Tutorial on Sparse Gaussian Processes and Variational Inference
Felix Leibfried
Vincent Dutordoir
S. T. John
N. Durrande
GP
42
49
0
27 Dec 2020
Evaluating Lossy Compression Rates of Deep Generative Models
Evaluating Lossy Compression Rates of Deep Generative Models
Sicong Huang
Alireza Makhzani
Yanshuai Cao
Roger C. Grosse
EGVM
DRL
8
27
0
15 Aug 2020
Failure Modes of Variational Autoencoders and Their Effects on
  Downstream Tasks
Failure Modes of Variational Autoencoders and Their Effects on Downstream Tasks
Yaniv Yacoby
Weiwei Pan
Finale Doshi-Velez
CML
DRL
32
25
0
14 Jul 2020
Variational Inference with Continuously-Indexed Normalizing Flows
Variational Inference with Continuously-Indexed Normalizing Flows
Anthony L. Caterini
R. Cornish
Dino Sejdinovic
Arnaud Doucet
BDL
24
19
0
10 Jul 2020
All in the Exponential Family: Bregman Duality in Thermodynamic
  Variational Inference
All in the Exponential Family: Bregman Duality in Thermodynamic Variational Inference
Rob Brekelmans
Vaden Masrani
Frank Wood
Greg Ver Steeg
Aram Galstyan
22
16
0
01 Jul 2020
not-MIWAE: Deep Generative Modelling with Missing not at Random Data
not-MIWAE: Deep Generative Modelling with Missing not at Random Data
Niels Bruun Ipsen
Pierre-Alexandre Mattei
J. Frellsen
DRL
14
54
0
23 Jun 2020
Advances in Black-Box VI: Normalizing Flows, Importance Weighting, and
  Optimization
Advances in Black-Box VI: Normalizing Flows, Importance Weighting, and Optimization
Abhinav Agrawal
Daniel Sheldon
Justin Domke
TPM
BDL
19
38
0
18 Jun 2020
Bayesian Neural Network via Stochastic Gradient Descent
Abhinav Sagar
UQCV
BDL
18
2
0
04 Jun 2020
Variational Autoencoder with Embedded Student-$t$ Mixture Model for
  Authorship Attribution
Variational Autoencoder with Embedded Student-ttt Mixture Model for Authorship Attribution
Benedikt T. Boenninghoff
Steffen Zeiler
R. M. Nickel
D. Kolossa
BDL
DRL
33
2
0
28 May 2020
A Framework for Interdomain and Multioutput Gaussian Processes
A Framework for Interdomain and Multioutput Gaussian Processes
Mark van der Wilk
Vincent Dutordoir
S. T. John
A. Artemev
Vincent Adam
J. Hensman
42
94
0
02 Mar 2020
Learning Discrete Distributions by Dequantization
Learning Discrete Distributions by Dequantization
Emiel Hoogeboom
Taco S. Cohen
Jakub M. Tomczak
DRL
34
31
0
30 Jan 2020
Particle Smoothing Variational Objectives
Particle Smoothing Variational Objectives
A. Moretti
Zizhao Wang
Luhuan Wu
Iddo Drori
I. Pe’er
32
10
0
20 Sep 2019
Divide and Couple: Using Monte Carlo Variational Objectives for
  Posterior Approximation
Divide and Couple: Using Monte Carlo Variational Objectives for Posterior Approximation
Justin Domke
Daniel Sheldon
26
18
0
24 Jun 2019
Conditional deep surrogate models for stochastic, high-dimensional, and
  multi-fidelity systems
Conditional deep surrogate models for stochastic, high-dimensional, and multi-fidelity systems
Yibo Yang
P. Perdikaris
SyDa
BDL
AI4CE
29
55
0
15 Jan 2019
MIWAE: Deep Generative Modelling and Imputation of Incomplete Data
MIWAE: Deep Generative Modelling and Imputation of Incomplete Data
Pierre-Alexandre Mattei
J. Frellsen
SyDa
25
45
0
06 Dec 2018
Variational Inference via $χ$-Upper Bound Minimization
Variational Inference via χχχ-Upper Bound Minimization
Adji Bousso Dieng
Dustin Tran
Rajesh Ranganath
John Paisley
David M. Blei
BDL
83
36
0
01 Nov 2016
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