Alert button
Picture for Geoffrey Roeder

Geoffrey Roeder

Alert button

Provably efficient variational generative modeling of quantum many-body systems via quantum-probabilistic information geometry

Add code
Bookmark button
Alert button
Jun 09, 2022
Faris M. Sbahi, Antonio J. Martinez, Sahil Patel, Dmitri Saberi, Jae Hyeon Yoo, Geoffrey Roeder, Guillaume Verdon

Figure 1 for Provably efficient variational generative modeling of quantum many-body systems via quantum-probabilistic information geometry
Figure 2 for Provably efficient variational generative modeling of quantum many-body systems via quantum-probabilistic information geometry
Figure 3 for Provably efficient variational generative modeling of quantum many-body systems via quantum-probabilistic information geometry
Figure 4 for Provably efficient variational generative modeling of quantum many-body systems via quantum-probabilistic information geometry
Viaarxiv icon

Probabilistic Graphical Models and Tensor Networks: A Hybrid Framework

Add code
Bookmark button
Alert button
Jun 29, 2021
Jacob Miller, Geoffrey Roeder, Tai-Danae Bradley

Figure 1 for Probabilistic Graphical Models and Tensor Networks: A Hybrid Framework
Figure 2 for Probabilistic Graphical Models and Tensor Networks: A Hybrid Framework
Figure 3 for Probabilistic Graphical Models and Tensor Networks: A Hybrid Framework
Figure 4 for Probabilistic Graphical Models and Tensor Networks: A Hybrid Framework
Viaarxiv icon

On Linear Identifiability of Learned Representations

Add code
Bookmark button
Alert button
Jul 08, 2020
Geoffrey Roeder, Luke Metz, Diederik P. Kingma

Figure 1 for On Linear Identifiability of Learned Representations
Figure 2 for On Linear Identifiability of Learned Representations
Figure 3 for On Linear Identifiability of Learned Representations
Figure 4 for On Linear Identifiability of Learned Representations
Viaarxiv icon

Learning Composable Energy Surrogates for PDE Order Reduction

Add code
Bookmark button
Alert button
May 15, 2020
Alex Beatson, Jordan T. Ash, Geoffrey Roeder, Tianju Xue, Ryan P. Adams

Figure 1 for Learning Composable Energy Surrogates for PDE Order Reduction
Figure 2 for Learning Composable Energy Surrogates for PDE Order Reduction
Figure 3 for Learning Composable Energy Surrogates for PDE Order Reduction
Figure 4 for Learning Composable Energy Surrogates for PDE Order Reduction
Viaarxiv icon

Efficient Amortised Bayesian Inference for Hierarchical and Nonlinear Dynamical Systems

Add code
Bookmark button
Alert button
May 28, 2019
Geoffrey Roeder, Paul K. Grant, Andrew Phillips, Neil Dalchau, Edward Meeds

Figure 1 for Efficient Amortised Bayesian Inference for Hierarchical and Nonlinear Dynamical Systems
Figure 2 for Efficient Amortised Bayesian Inference for Hierarchical and Nonlinear Dynamical Systems
Figure 3 for Efficient Amortised Bayesian Inference for Hierarchical and Nonlinear Dynamical Systems
Figure 4 for Efficient Amortised Bayesian Inference for Hierarchical and Nonlinear Dynamical Systems
Viaarxiv icon

Backpropagation through the Void: Optimizing control variates for black-box gradient estimation

Add code
Bookmark button
Alert button
Feb 23, 2018
Will Grathwohl, Dami Choi, Yuhuai Wu, Geoffrey Roeder, David Duvenaud

Figure 1 for Backpropagation through the Void: Optimizing control variates for black-box gradient estimation
Figure 2 for Backpropagation through the Void: Optimizing control variates for black-box gradient estimation
Figure 3 for Backpropagation through the Void: Optimizing control variates for black-box gradient estimation
Figure 4 for Backpropagation through the Void: Optimizing control variates for black-box gradient estimation
Viaarxiv icon

Sticking the Landing: Simple, Lower-Variance Gradient Estimators for Variational Inference

Add code
Bookmark button
Alert button
May 28, 2017
Geoffrey Roeder, Yuhuai Wu, David Duvenaud

Figure 1 for Sticking the Landing: Simple, Lower-Variance Gradient Estimators for Variational Inference
Figure 2 for Sticking the Landing: Simple, Lower-Variance Gradient Estimators for Variational Inference
Figure 3 for Sticking the Landing: Simple, Lower-Variance Gradient Estimators for Variational Inference
Figure 4 for Sticking the Landing: Simple, Lower-Variance Gradient Estimators for Variational Inference
Viaarxiv icon