Bayesian neural networks (BNNs) with latent variables are probabilistic models which can automatically identify complex stochastic patterns in the data. We describe and study in these models a decomposition of predictive uncertainty into its epistemic and aleatoric components. First, we show how such a decomposition arises naturally in a Bayesian active learning scenario by following an information theoretic approach. Second, we use a similar decomposition to develop a novel risk sensitive objective for safe reinforcement learning (RL). This objective minimizes the effect of model bias in environments whose stochastic dynamics are described by BNNs with latent variables. Our experiments illustrate the usefulness of the resulting decompositi...
Understanding the uncertainty of a neural network's (NN) predictions is essential for many purposes....
Characterizing aleatoric and epistemic uncertainty on the predicted rewards can help in building rel...
Bayesian neural networks have successfully designed and optimized a robust neural network model in m...
Bayesian neural networks with latent variables are scalable and flexible probabilistic models: They ...
Deep Learning-based models are becoming more and more relevant for an increasing number of applicati...
Bayesian neural networks (BNNs) promise improved generalization under covariate shift by providing p...
Diversity of environments is a key challenge that causes learned robotic controllers to fail due to ...
This thesis puts forward methods for computing local robustness of probabilistic neural networks, s...
We consider the model-based reinforcement learning framework where we are interested in learning a m...
In this work, I will focus on ways in which we can build machine learning models that appropriately ...
Bayesian statistics is a powerful framework for modeling the world and reasoning over uncertainty. I...
In the past few years, complex neural networks have achieved state of the art results in image class...
The breakout success of deep neural networks (NNs) in the 2010's marked a new era in the quest to bu...
We examine a graphical representation of uncertain knowledge called a Bayesian network. The represen...
Recently, evidence has emerged that humans approach learning using Bayesian updating rather than (mo...
Understanding the uncertainty of a neural network's (NN) predictions is essential for many purposes....
Characterizing aleatoric and epistemic uncertainty on the predicted rewards can help in building rel...
Bayesian neural networks have successfully designed and optimized a robust neural network model in m...
Bayesian neural networks with latent variables are scalable and flexible probabilistic models: They ...
Deep Learning-based models are becoming more and more relevant for an increasing number of applicati...
Bayesian neural networks (BNNs) promise improved generalization under covariate shift by providing p...
Diversity of environments is a key challenge that causes learned robotic controllers to fail due to ...
This thesis puts forward methods for computing local robustness of probabilistic neural networks, s...
We consider the model-based reinforcement learning framework where we are interested in learning a m...
In this work, I will focus on ways in which we can build machine learning models that appropriately ...
Bayesian statistics is a powerful framework for modeling the world and reasoning over uncertainty. I...
In the past few years, complex neural networks have achieved state of the art results in image class...
The breakout success of deep neural networks (NNs) in the 2010's marked a new era in the quest to bu...
We examine a graphical representation of uncertain knowledge called a Bayesian network. The represen...
Recently, evidence has emerged that humans approach learning using Bayesian updating rather than (mo...
Understanding the uncertainty of a neural network's (NN) predictions is essential for many purposes....
Characterizing aleatoric and epistemic uncertainty on the predicted rewards can help in building rel...
Bayesian neural networks have successfully designed and optimized a robust neural network model in m...