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Fast and Scalable Bayesian Deep Learning by Weight-Perturbation in Adam

Fast and Scalable Bayesian Deep Learning by Weight-Perturbation in Adam

13 June 2018
Mohammad Emtiyaz Khan
Didrik Nielsen
Voot Tangkaratt
Wu Lin
Y. Gal
Akash Srivastava
    ODL
ArXivPDFHTML

Papers citing "Fast and Scalable Bayesian Deep Learning by Weight-Perturbation in Adam"

16 / 16 papers shown
Title
Spectral-factorized Positive-definite Curvature Learning for NN Training
Spectral-factorized Positive-definite Curvature Learning for NN Training
Wu Lin
Felix Dangel
Runa Eschenhagen
Juhan Bae
Richard E. Turner
Roger B. Grosse
32
0
0
10 Feb 2025
Sampling from Bayesian Neural Network Posteriors with Symmetric Minibatch Splitting Langevin Dynamics
Sampling from Bayesian Neural Network Posteriors with Symmetric Minibatch Splitting Langevin Dynamics
Daniel Paulin
P. Whalley
Neil K. Chada
B. Leimkuhler
BDL
22
4
0
14 Oct 2024
Manifold Sampling for Differentiable Uncertainty in Radiance Fields
Manifold Sampling for Differentiable Uncertainty in Radiance Fields
Linjie Lyu
Ayush Tewari
Marc Habermann
Shunsuke Saito
Michael Zollhöfer
Thomas Leimkühler
Christian Theobalt
UQCV
18
1
0
19 Sep 2024
Function-Space MCMC for Bayesian Wide Neural Networks
Function-Space MCMC for Bayesian Wide Neural Networks
Lucia Pezzetti
Stefano Favaro
Stefano Peluchetti
BDL
23
0
0
26 Aug 2024
Linearization Turns Neural Operators into Function-Valued Gaussian Processes
Linearization Turns Neural Operators into Function-Valued Gaussian Processes
Emilia Magnani
Marvin Pfortner
Tobias Weber
Philipp Hennig
UQCV
42
1
0
07 Jun 2024
WeiPer: OOD Detection using Weight Perturbations of Class Projections
WeiPer: OOD Detection using Weight Perturbations of Class Projections
Maximilian Granz
Manuel Heurich
Tim Landgraf
OODD
25
1
0
27 May 2024
Variational Stochastic Gradient Descent for Deep Neural Networks
Variational Stochastic Gradient Descent for Deep Neural Networks
Haotian Chen
Anna Kuzina
Babak Esmaeili
Jakub M. Tomczak
25
0
0
09 Apr 2024
Model Merging by Uncertainty-Based Gradient Matching
Model Merging by Uncertainty-Based Gradient Matching
Nico Daheim
Thomas Möllenhoff
E. Ponti
Iryna Gurevych
Mohammad Emtiyaz Khan
MoMe
FedML
19
43
0
19 Oct 2023
Law of Large Numbers for Bayesian two-layer Neural Network trained with
  Variational Inference
Law of Large Numbers for Bayesian two-layer Neural Network trained with Variational Inference
Arnaud Descours
Tom Huix
Arnaud Guillin
Manon Michel
Eric Moulines
Boris Nectoux
BDL
4
1
0
10 Jul 2023
Uncertainty-aware Evaluation of Time-Series Classification for Online
  Handwriting Recognition with Domain Shift
Uncertainty-aware Evaluation of Time-Series Classification for Online Handwriting Recognition with Domain Shift
Andreas Klass
Sven M. Lorenz
M. Lauer-Schmaltz
David Rügamer
Bernd Bischl
Christopher Mutschler
Felix Ott
19
10
0
17 Jun 2022
Stochastic Neural Networks with Infinite Width are Deterministic
Stochastic Neural Networks with Infinite Width are Deterministic
Liu Ziyin
Hanlin Zhang
Xiangming Meng
Yuting Lu
Eric P. Xing
Masakuni Ueda
6
3
0
30 Jan 2022
Gradient Descent on Neurons and its Link to Approximate Second-Order
  Optimization
Gradient Descent on Neurons and its Link to Approximate Second-Order Optimization
Frederik Benzing
ODL
27
23
0
28 Jan 2022
Bayesian Image Reconstruction using Deep Generative Models
Bayesian Image Reconstruction using Deep Generative Models
Razvan V. Marinescu
Daniel Moyer
Polina Golland
OOD
DiffM
8
37
0
08 Dec 2020
The Emerging Trends of Multi-Label Learning
The Emerging Trends of Multi-Label Learning
Weiwei Liu
Haobo Wang
Xiaobo Shen
Ivor W. Tsang
22
244
0
23 Nov 2020
Efficient Per-Example Gradient Computations
Efficient Per-Example Gradient Computations
Ian Goodfellow
140
73
0
07 Oct 2015
Dropout as a Bayesian Approximation: Representing Model Uncertainty in
  Deep Learning
Dropout as a Bayesian Approximation: Representing Model Uncertainty in Deep Learning
Y. Gal
Zoubin Ghahramani
UQCV
BDL
243
9,042
0
06 Jun 2015
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