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2008.05912
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A statistical theory of cold posteriors in deep neural networks
13 August 2020
Laurence Aitchison
UQCV
BDL
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Papers citing
"A statistical theory of cold posteriors in deep neural networks"
49 / 49 papers shown
Title
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A Weighted-likelihood framework for class imbalance in Bayesian prediction models
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Diffusion Priors for Variational Likelihood Estimation and Image Denoising
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Shan Tan
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104
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Temperature Optimization for Bayesian Deep Learning
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Chris van der Heide
Liam Hodgkinson
Susan Wei
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109
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08 Oct 2024
Predictive performance of power posteriors
Yann McLatchie
Edwin Fong
David T. Frazier
Jeremias Knoblauch
56
2
0
16 Aug 2024
Scalable Bayesian Learning with posteriors
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Kaelan Donatella
Johnathan Chiu
Phoebe Klett
Daniel Simpson
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178
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31 May 2024
Making Better Use of Unlabelled Data in Bayesian Active Learning
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102
4
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141
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97
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61
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Position: Bayesian Deep Learning is Needed in the Age of Large-Scale AI
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Maria Skoularidou
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Max Welling
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Ruqi Zhang
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131
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Uncertainty-aware Surrogate Models for Airfoil Flow Simulations with Denoising Diffusion Probabilistic Models
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Nils Thuerey
DiffM
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65
16
0
08 Dec 2023
If there is no underfitting, there is no Cold Posterior Effect
Yijie Zhang
Yi-Shan Wu
Luis A. Ortega
A. Masegosa
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61
1
0
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A Primer on Bayesian Neural Networks: Review and Debates
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Vincent Fortuin
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103
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The fine print on tempered posteriors
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Julyan Arbel
63
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Function-Space Regularization for Deep Bayesian Classification
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Joe Watson
Pascal Klink
Jan Peters
UQCV
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66
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0
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Non-reversible Parallel Tempering for Deep Posterior Approximation
Wei Deng
Qian Zhang
Qi Feng
F. Liang
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64
4
0
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Monotonicity and Double Descent in Uncertainty Estimation with Gaussian Processes
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Christopher van der Heide
Fred Roosta
Michael W. Mahoney
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65
6
0
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Identify ambiguous tasks combining crowdsourced labels by weighting Areas Under the Margin
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Benjamin Charlier
Alexis Joly
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73
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Robustness to corruption in pre-trained Bayesian neural networks
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Laurence Aitchison
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54
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0
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Cold Posteriors through PAC-Bayes
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89
5
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How Tempering Fixes Data Augmentation in Bayesian Neural Networks
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Thomas Hofmann
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125
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27 May 2022
On Uncertainty, Tempering, and Data Augmentation in Bayesian Classification
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Wesley J. Maddox
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92
51
0
30 Mar 2022
UncertaINR: Uncertainty Quantification of End-to-End Implicit Neural Representations for Computed Tomography
Francisca Vasconcelos
Bobby He
Nalini Singh
Yee Whye Teh
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69
13
0
22 Feb 2022
Interacting Contour Stochastic Gradient Langevin Dynamics
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Siqi Liang
Botao Hao
Guang Lin
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79
10
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Theoretical characterization of uncertainty in high-dimensional linear classification
Lucas Clarté
Bruno Loureiro
Florent Krzakala
Lenka Zdeborová
78
21
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Posterior temperature optimized Bayesian models for inverse problems in medical imaging
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Malte Tolle
Alexander Schlaefer
Sandy Engelhardt
76
10
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How Infinitely Wide Neural Networks Can Benefit from Multi-task Learning -- an Exact Macroscopic Characterization
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Weight Pruning and Uncertainty in Radio Galaxy Classification
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A. Scaife
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73
0
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23 Nov 2021
Dense Uncertainty Estimation via an Ensemble-based Conditional Latent Variable Model
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Yuchao Dai
Mehrtash Harandi
Yiran Zhong
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Leonid Sigal
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60
1
0
22 Nov 2021
Periodic Activation Functions Induce Stationarity
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Martin Trapp
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84
21
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Bayesian neural network unit priors and generalized Weibull-tail property
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Julyan Arbel
Stéphane Girard
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84
9
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06 Oct 2021
Deep Classifiers with Label Noise Modeling and Distance Awareness
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Mark Collier
F. Wenzel
J. Allingham
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76
11
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06 Oct 2021
Non-asymptotic estimates for TUSLA algorithm for non-convex learning with applications to neural networks with ReLU activation function
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Ariel Neufeld
Sotirios Sabanis
Ying Zhang
80
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0
19 Jul 2021
Disentangling the Roles of Curation, Data-Augmentation and the Prior in the Cold Posterior Effect
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Kevin Roth
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Sebastian Nowozin
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77
26
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11 Jun 2021
Posterior Temperature Optimization in Variational Inference for Inverse Problems
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Model Selection for Bayesian Autoencoders
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Simone Rossi
Dimitrios Milios
Pietro Michiardi
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Maurizio Filippone
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79
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0
11 Jun 2021
Data augmentation in Bayesian neural networks and the cold posterior effect
Seth Nabarro
Stoil Ganev
Adrià Garriga-Alonso
Vincent Fortuin
Mark van der Wilk
Laurence Aitchison
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83
41
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Polygonal Unadjusted Langevin Algorithms: Creating stable and efficient adaptive algorithms for neural networks
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Sotirios Sabanis
97
12
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What Are Bayesian Neural Network Posteriors Really Like?
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Sharad Vikram
Matthew D. Hoffman
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81
388
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29 Apr 2021
Bayesian OOD detection with aleatoric uncertainty and outlier exposure
Xi Wang
Laurence Aitchison
UD
72
15
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24 Feb 2021
Bayesian Neural Network Priors Revisited
Vincent Fortuin
Adrià Garriga-Alonso
Sebastian W. Ober
F. Wenzel
Gunnar Rätsch
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Mark van der Wilk
Laurence Aitchison
BDL
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133
141
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12 Feb 2021
Variational Laplace for Bayesian neural networks
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30
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Semi-supervised learning objectives as log-likelihoods in a generative model of data curation
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31
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Global inducing point variational posteriors for Bayesian neural networks and deep Gaussian processes
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112
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