Follow
Geoffrey Roeder
Geoffrey Roeder
Verified email at princeton.edu - Homepage
Title
Cited by
Cited by
Year
Backpropagation through the void: Optimizing control variates for black-box gradient estimation
W Grathwohl, D Choi, Y Wu, G Roeder, D Duvenaud
arXiv preprint arXiv:1711.00123, 2017
3072017
Sticking the landing: Simple, lower-variance gradient estimators for variational inference
G Roeder, Y Wu, DK Duvenaud
Advances in Neural Information Processing Systems 30, 2017
2052017
On linear identifiability of learned representations
G Roeder, L Metz, D Kingma
International Conference on Machine Learning, 9030-9039, 2021
642021
A data-driven computational scheme for the nonlinear mechanical properties of cellular mechanical metamaterials under large deformation
T Xue, A Beatson, M Chiaramonte, G Roeder, JT Ash, Y Menguc, ...
Soft matter 16 (32), 7524-7534, 2020
412020
Efficient amortised bayesian inference for hierarchical and nonlinear dynamical systems
G Roeder, T Meeds, P Grant, A Phillips, N Dalchau
International Conference on Machine Learning, 4445-4455, 2019
222019
Learning composable energy surrogates for pde order reduction
A Beatson, J Ash, G Roeder, T Xue, RP Adams
Advances in neural information processing systems 33, 338-348, 2020
182020
Provably efficient variational generative modeling of quantum many-body systems via quantum-probabilistic information geometry
FM Sbahi, AJ Martinez, S Patel, D Saberi, JH Yoo, G Roeder, G Verdon
arXiv preprint arXiv:2206.04663, 2022
82022
Modelling ordinary differential equations using a variational auto encoder
E Meeds, G Roeder, N Dalchau
US Patent 11,030,275, 2021
62021
Probabilistic graphical models and tensor networks: a hybrid framework
J Miller, G Roeder, TD Bradley
arXiv preprint arXiv:2106.15666, 2021
32021
More Stiffness with Less Fiber: End-to-End Fiber Path Optimization for 3D-Printed Composites
X Sun, G Roeder, T Xue, RP Adams, S Rusinkiewicz
Proceedings of the 8th ACM Symposium on Computational Fabrication, 1-14, 2023
12023
Generative Modelling of Quantum Processes via Quantum-Probabilistic Information Geometry
S Patel, F Sbahi, A Martinez, D Saberi, J Yoo, G Roeder, G Verdon
2022
Quantum Machine Learning with Quantum-Probabilistic Generative Models
A Martinez, G Roeder, G Verdon-Akzam
APS March Meeting Abstracts 2021, S32. 010, 2021
2021
Design Motifs for Probabilistic Generative Design
G Roeder, N Killoran, W Grathwohl, D Duvenaud
2018
The system can't perform the operation now. Try again later.
Articles 1–13