Obserwuj
Erik Daxberger
Erik Daxberger
Zweryfikowany adres z apple.com
Tytuł
Cytowane przez
Cytowane przez
Rok
Laplace Redux--Effortless Bayesian Deep Learning
E Daxberger*, A Kristiadi*, A Immer*, R Eschenhagen*, M Bauer, ...
NeurIPS 2021, 2021
2072021
Sample-Efficient Optimization in the Latent Space of Deep Generative Models via Weighted Retraining
A Tripp*, E Daxberger*, JM Hernández-Lobato
NeurIPS 2020, 2020
1182020
Embedding Models for Episodic Knowledge Graphs
Y Ma, V Tresp, EA Daxberger
Journal of Web Semantics, 2018
972018
Bayesian Deep Learning via Subnetwork Inference
E Daxberger, E Nalisnick, JU Allingham, J Antorán, ...
ICML 2021, 2021
81*2021
Distributed Batch Gaussian Process Optimization
EA Daxberger, BKH Low
ICML 2017, 2017
552017
Bayesian Variational Autoencoders for Unsupervised Out-of-Distribution Detection
E Daxberger, JM Hernández-Lobato
Bayesian Deep Learning Workshop, NeurIPS 2019, 2019
532019
Mixed-Variable Bayesian Optimization
E Daxberger*, A Makarova*, M Turchetta, A Krause
IJCAI 2020, 2020
432020
Adapting the Linearised Laplace Model Evidence for Modern Deep Learning
J Antorán, D Janz, JU Allingham, E Daxberger, R Barbano, E Nalisnick, ...
ICML 2022, 2022
25*2022
Mixtures of Laplace Approximations for Improved Post-Hoc Uncertainty in Deep Learning
R Eschenhagen, E Daxberger, P Hennig, A Kristiadi
Bayesian Deep Learning Workshop, NeurIPS 2021, 2021
192021
Mobile V-MoEs: Scaling Down Vision Transformers via Sparse Mixture-of-Experts
E Daxberger, F Weers, B Zhang, T Gunter, R Pang, M Eichner, ...
arXiv 2023, 2023
22023
Improving Continual Learning by Accurate Gradient Reconstructions of the Past
E Daxberger, S Swaroop, K Osawa, R Yokota, RE Turner, ...
TMLR 2023, 2023
12023
Advances in Probabilistic Deep Learning and Their Applications
EA Daxberger
University of Cambridge, 2023
2023
Nie można teraz wykonać tej operacji. Spróbuj ponownie później.
Prace 1–12