We introduce a novel grid-independent model for learning partial differe...
Deep Ensembles (DEs) demonstrate improved accuracy, calibration and
robu...
Antibodies are Y-shaped proteins that neutralize pathogens and constitut...
Optimal transport (OT) is a powerful geometric tool used to compare and ...
This paper introduces Bayesian uncertainty modeling using Stochastic Wei...
Hamiltonian mechanics is one of the cornerstones of natural sciences.
Re...
We introduce functional diffusion processes (FDPs), which generalize
tra...
Generating new molecules is fundamental to advancing critical applicatio...
Training dynamic models, such as neural ODEs, on long trajectories is a ...
Bayesian deep learning offers a principled approach to train neural netw...
While diffusion models have shown great success in image generation, the...
Bayesian neural networks (BNNs) promise improved generalization under
co...
Approximate Bayesian inference estimates descriptors of an intractable t...
Graph Gaussian Processes (GGPs) provide a data-efficient solution on gra...
Recent machine learning advances have proposed black-box estimation of
u...
Sample-efficient domain adaptation is an open problem in robotics. In th...
Model-based reinforcement learning (MBRL) approaches rely on discrete-ti...
Reinforcement learning provides a framework for learning to control whic...
We introduce implicit Bayesian neural networks, a simple and scalable
ap...
In machine learning and computer vision, optimal transport has had
signi...
In recent years, surrogate models have been successfully used in
likelih...
The behavior of many dynamical systems follow complex, yet still unknown...
Variational inference techniques based on inducing variables provide an
...
We present Ordinary Differential Equation Variational Auto-Encoder
(ODE^...
We introduce the convolutional spectral kernel (CSK), a novel family of
...
Standard kernels such as Matérn or RBF kernels only encode simple monoto...
The expressive power of Gaussian processes depends heavily on the choice...
We propose a novel deep learning paradigm of differential flows that lea...
We propose deep convolutional Gaussian processes, a deep Gaussian proces...
We introduce a novel paradigm for learning non-parametric drift and diff...
Metabolic flux balance analyses are a standard tool in analysing metabol...
Zero-inflated datasets, which have an excess of zero outputs, are common...
In conventional ODE modelling coefficients of an equation driving the sy...
Proteins are commonly used by biochemical industry for numerous processe...
We propose non-stationary spectral kernels for Gaussian process regressi...
We introduce a novel kernel that models input-dependent couplings across...
We present a novel approach for fully non-stationary Gaussian process
re...
Modeling dynamical systems with ordinary differential equations implies ...