Counterfactual analysis is intuitively performed by humans on a daily ba...
Many real-world dynamical systems can be described as State-Space Models...
We propose a novel Bayesian-Optimistic Frequentist Upper Confidence Boun...
Graph neural networks are often used to model interacting dynamical syst...
Actor-critic algorithms address the dual goals of reinforcement learning...
PAC-Bayes has recently re-emerged as an effective theory with which one ...
We study for the first time uncertainty-aware modeling of continuous-tim...
We present a PAC-Bayesian analysis of lifelong learning. In the lifelong...
We study the problem of fitting a model to a dynamical environment when ...
Gaussian Process state-space models capture complex temporal dependencie...
A probabilistic classifier with reliable predictive uncertainties i) fit...
In this paper, we introduce an efficient backpropagation scheme for
non-...
We propose a novel scheme for fitting heavily parameterized non-linear
s...
Model noise is known to have detrimental effects on neural networks, suc...
Neural Ordinary Differential Equations (N-ODEs) are a powerful building ...
Model selection is treated as a standard performance boosting step in ma...
We propose to train Bayesian Neural Networks (BNNs) by empirical Bayes a...
Deterministic neural nets have been shown to learn effective predictors ...
We propose a new Bayesian Neural Net (BNN) formulation that affords
vari...