Evolving-Graph Gaussian Processes

06/29/2021
by   David Blanco-Mulero, et al.
16

Graph Gaussian Processes (GGPs) provide a data-efficient solution on graph structured domains. Existing approaches have focused on static structures, whereas many real graph data represent a dynamic structure, limiting the applications of GGPs. To overcome this we propose evolving-Graph Gaussian Processes (e-GGPs). The proposed method is capable of learning the transition function of graph vertices over time with a neighbourhood kernel to model the connectivity and interaction changes between vertices. We assess the performance of our method on time-series regression problems where graphs evolve over time. We demonstrate the benefits of e-GGPs over static graph Gaussian Process approaches.

READ FULL TEXT

page 1

page 2

page 3

page 4

research
05/14/2019

Graph Convolutional Gaussian Processes

We propose a novel Bayesian nonparametric method to learn translation-in...
research
04/21/2017

Time Series Prediction for Graphs in Kernel and Dissimilarity Spaces

Graph models are relevant in many fields, such as distributed computing,...
research
03/15/2018

Gaussian Processes Over Graphs

We propose Gaussian processes for signals over graphs (GPG) using the ap...
research
12/14/2021

Modeling Advection on Directed Graphs using Matérn Gaussian Processes for Traffic Flow

The transport of traffic flow can be modeled by the advection equation. ...
research
02/10/2020

SplitStreams: A Visual Metaphor for Evolving Hierarchies

The visualization of hierarchically structured data over time is an ongo...
research
06/14/2020

GP3: A Sampling-based Analysis Framework for Gaussian Processes

Although machine learning is increasingly applied in control approaches,...
research
04/29/2008

Gaussian Processes and Limiting Linear Models

Gaussian processes retain the linear model either as a special case, or ...

Please sign up or login with your details

Forgot password? Click here to reset