Gaussian processes are a versatile framework for learning unknown functions in a manner that permits one to utilize prior information about their properties. Although many different Gaussian process models are readily available when the input space is Euclidean, the choice is much more limited for Gaussian processes whose input space is an undirected graph. In this work, we leverage the stochastic partial differential equation characterization of Mat´ern Gaussian processes—a widelyused model class in the Euclidean setting—to study their analog for undirected graphs. We show that the resulting Gaussian processes inherit various attractive properties of their Euclidean and Riemannian analogs and provide techniques that allow them t...
Gaussian processes (GPs) are natural generalisations of multivariate Gaussian random variables to in...
As Gaussian processes are used to answer increasingly complex questions, analytic solutions become s...
Dynamical systems present in the real world are often well represented using stochastic differential...
Gaussian processes are a versatile framework for learning unknown functions in a manner that permi...
Gaussian processes are a versatile framework for learning unknown functions in a manner that permi...
Gaussian process (GP) is a stochastic process that has been studied for a long time and gained wide ...
This paper will discuss how a Gaussian process, which describes a probability distribution over an i...
We propose a novel Bayesian nonparametricmethod to learn translation-invariant relationshipson non-E...
Bayesian learning using Gaussian processes provides a foundational framework for making decisions in...
We give a basic introduction to Gaussian Process regression models. We focus on understanding the ro...
We give a basic introduction to Gaussian Process regression models. We focus on understanding the ro...
International audienceIn this work, we consider the problem of learning regression models from a fin...
International audienceIn this work, we consider the problem of learning regression models from a fin...
International audienceIn this work, we consider the problem of learning regression models from a fin...
We propose a principled way to define Gaussian process priors on various sets of unweighted graphs: ...
Gaussian processes (GPs) are natural generalisations of multivariate Gaussian random variables to in...
As Gaussian processes are used to answer increasingly complex questions, analytic solutions become s...
Dynamical systems present in the real world are often well represented using stochastic differential...
Gaussian processes are a versatile framework for learning unknown functions in a manner that permi...
Gaussian processes are a versatile framework for learning unknown functions in a manner that permi...
Gaussian process (GP) is a stochastic process that has been studied for a long time and gained wide ...
This paper will discuss how a Gaussian process, which describes a probability distribution over an i...
We propose a novel Bayesian nonparametricmethod to learn translation-invariant relationshipson non-E...
Bayesian learning using Gaussian processes provides a foundational framework for making decisions in...
We give a basic introduction to Gaussian Process regression models. We focus on understanding the ro...
We give a basic introduction to Gaussian Process regression models. We focus on understanding the ro...
International audienceIn this work, we consider the problem of learning regression models from a fin...
International audienceIn this work, we consider the problem of learning regression models from a fin...
International audienceIn this work, we consider the problem of learning regression models from a fin...
We propose a principled way to define Gaussian process priors on various sets of unweighted graphs: ...
Gaussian processes (GPs) are natural generalisations of multivariate Gaussian random variables to in...
As Gaussian processes are used to answer increasingly complex questions, analytic solutions become s...
Dynamical systems present in the real world are often well represented using stochastic differential...