Having access to accurate confidence levels along with the predictions allows to determine whether making a decision is worth the risk. Under the Bayesian paradigm, the posterior distribution over parameters is used to capture model uncertainty, a valuable information that can be translated into predictive uncertainty. However, computing the posterior distribution for high capacity predictors, such as neural networks, is generally intractable, making approximate methods such as variational inference a promising alternative. While most methods perform inference in the space of parameters, we explore the benefits of carrying inference directly in the space of predictors. Relying on a family of distributions given by a deep generative neural n...
We introduce a new, rigorously-formulated Bayesian meta-learning algorithm that learns a probability...
Variational inference (VI) or Variational Bayes (VB) is a popular alternative to MCMC, which doesn\u...
A common question regarding the application of neural networks is whether the predictions of the mod...
Having access to accurate confidence levels along with the predictions allows to determine whether m...
Bayesian statistics is a powerful framework for modeling the world and reasoning over uncertainty. I...
Recent work has attempted to directly approximate the `function-space' or predictive posterior distr...
Bayesian neural networks (BNNs) hold great promise as a flexible and principled solution to deal wit...
Implicit processes (IPs) are a generalization of Gaussian processes (GPs). IPs may lack a closed-for...
We develop unbiased implicit variational inference (UIVI), a method that expands the applicability o...
As Deep Learning continues to yield successful applications in Computer Vision, the ability to quant...
Variational inference is an optimization-based method for approximating the posterior distribution o...
Variational inference is one of the tools that now lies at the heart of the modern data analysis lif...
In this work, I will focus on ways in which we can build machine learning models that appropriately ...
We describe a limitation in the expressiveness of the predictive uncertainty estimate given by mean-...
Variational inference is an optimization-based method for approximating the posterior distribution o...
We introduce a new, rigorously-formulated Bayesian meta-learning algorithm that learns a probability...
Variational inference (VI) or Variational Bayes (VB) is a popular alternative to MCMC, which doesn\u...
A common question regarding the application of neural networks is whether the predictions of the mod...
Having access to accurate confidence levels along with the predictions allows to determine whether m...
Bayesian statistics is a powerful framework for modeling the world and reasoning over uncertainty. I...
Recent work has attempted to directly approximate the `function-space' or predictive posterior distr...
Bayesian neural networks (BNNs) hold great promise as a flexible and principled solution to deal wit...
Implicit processes (IPs) are a generalization of Gaussian processes (GPs). IPs may lack a closed-for...
We develop unbiased implicit variational inference (UIVI), a method that expands the applicability o...
As Deep Learning continues to yield successful applications in Computer Vision, the ability to quant...
Variational inference is an optimization-based method for approximating the posterior distribution o...
Variational inference is one of the tools that now lies at the heart of the modern data analysis lif...
In this work, I will focus on ways in which we can build machine learning models that appropriately ...
We describe a limitation in the expressiveness of the predictive uncertainty estimate given by mean-...
Variational inference is an optimization-based method for approximating the posterior distribution o...
We introduce a new, rigorously-formulated Bayesian meta-learning algorithm that learns a probability...
Variational inference (VI) or Variational Bayes (VB) is a popular alternative to MCMC, which doesn\u...
A common question regarding the application of neural networks is whether the predictions of the mod...