Picture for Yee Whye Teh

Yee Whye Teh

University College London

A Unified Stochastic Gradient Approach to Designing Bayesian-Optimal Experiments

Add code
Nov 01, 2019
Figure 1 for A Unified Stochastic Gradient Approach to Designing Bayesian-Optimal Experiments
Figure 2 for A Unified Stochastic Gradient Approach to Designing Bayesian-Optimal Experiments
Figure 3 for A Unified Stochastic Gradient Approach to Designing Bayesian-Optimal Experiments
Figure 4 for A Unified Stochastic Gradient Approach to Designing Bayesian-Optimal Experiments
Viaarxiv icon

Continual Unsupervised Representation Learning

Add code
Oct 31, 2019
Figure 1 for Continual Unsupervised Representation Learning
Figure 2 for Continual Unsupervised Representation Learning
Figure 3 for Continual Unsupervised Representation Learning
Figure 4 for Continual Unsupervised Representation Learning
Viaarxiv icon

Divide, Conquer, and Combine: a New Inference Strategy for Probabilistic Programs with Stochastic Support

Add code
Oct 29, 2019
Figure 1 for Divide, Conquer, and Combine: a New Inference Strategy for Probabilistic Programs with Stochastic Support
Figure 2 for Divide, Conquer, and Combine: a New Inference Strategy for Probabilistic Programs with Stochastic Support
Figure 3 for Divide, Conquer, and Combine: a New Inference Strategy for Probabilistic Programs with Stochastic Support
Figure 4 for Divide, Conquer, and Combine: a New Inference Strategy for Probabilistic Programs with Stochastic Support
Viaarxiv icon

Deep Amortized Clustering

Add code
Sep 30, 2019
Figure 1 for Deep Amortized Clustering
Figure 2 for Deep Amortized Clustering
Figure 3 for Deep Amortized Clustering
Figure 4 for Deep Amortized Clustering
Viaarxiv icon

Stacked Capsule Autoencoders

Add code
Jun 17, 2019
Figure 1 for Stacked Capsule Autoencoders
Figure 2 for Stacked Capsule Autoencoders
Figure 3 for Stacked Capsule Autoencoders
Figure 4 for Stacked Capsule Autoencoders
Viaarxiv icon

Random Tessellation Forests

Add code
Jun 13, 2019
Figure 1 for Random Tessellation Forests
Figure 2 for Random Tessellation Forests
Figure 3 for Random Tessellation Forests
Figure 4 for Random Tessellation Forests
Viaarxiv icon

Task Agnostic Continual Learning via Meta Learning

Add code
Jun 12, 2019
Figure 1 for Task Agnostic Continual Learning via Meta Learning
Figure 2 for Task Agnostic Continual Learning via Meta Learning
Figure 3 for Task Agnostic Continual Learning via Meta Learning
Figure 4 for Task Agnostic Continual Learning via Meta Learning
Viaarxiv icon

Detecting Out-of-Distribution Inputs to Deep Generative Models Using a Test for Typicality

Add code
Jun 07, 2019
Figure 1 for Detecting Out-of-Distribution Inputs to Deep Generative Models Using a Test for Typicality
Figure 2 for Detecting Out-of-Distribution Inputs to Deep Generative Models Using a Test for Typicality
Figure 3 for Detecting Out-of-Distribution Inputs to Deep Generative Models Using a Test for Typicality
Figure 4 for Detecting Out-of-Distribution Inputs to Deep Generative Models Using a Test for Typicality
Viaarxiv icon

Noise Contrastive Meta-Learning for Conditional Density Estimation using Kernel Mean Embeddings

Add code
Jun 05, 2019
Figure 1 for Noise Contrastive Meta-Learning for Conditional Density Estimation using Kernel Mean Embeddings
Figure 2 for Noise Contrastive Meta-Learning for Conditional Density Estimation using Kernel Mean Embeddings
Figure 3 for Noise Contrastive Meta-Learning for Conditional Density Estimation using Kernel Mean Embeddings
Figure 4 for Noise Contrastive Meta-Learning for Conditional Density Estimation using Kernel Mean Embeddings
Viaarxiv icon

Hijacking Malaria Simulators with Probabilistic Programming

Add code
May 29, 2019
Figure 1 for Hijacking Malaria Simulators with Probabilistic Programming
Figure 2 for Hijacking Malaria Simulators with Probabilistic Programming
Figure 3 for Hijacking Malaria Simulators with Probabilistic Programming
Figure 4 for Hijacking Malaria Simulators with Probabilistic Programming
Viaarxiv icon