The Gaussian Process Autoregressive Regression Model (GPAR)

02/20/2018
by   James Requeima, et al.
0

Multi-output regression models must exploit dependencies between outputs to maximise predictive performance. The application of Gaussian processes (GPs) to this setting typically yields models that are computationally demanding and have limited representational power. We present the Gaussian Process Autoregressive Regression (GPAR) model, a scalable multi-output GP model that is able to capture nonlinear, possibly input-varying, dependencies between outputs in a simple and tractable way: the product rule is used to decompose the joint distribution over the outputs into a set of conditionals, each of which is modelled by a standard GP. GPAR's efficacy is demonstrated on a variety of synthetic and real-world problems, outperforming existing GP models and achieving state-of-the-art performance on the tasks with existing benchmarks.

READ FULL TEXT

page 1

page 2

page 3

page 4

research
11/05/2019

GP-ALPS: Automatic Latent Process Selection for Multi-Output Gaussian Process Models

A simple and widely adopted approach to extend Gaussian processes (GPs) ...
research
06/01/2021

Collaborative Nonstationary Multivariate Gaussian Process Model

Currently, multi-output Gaussian process regression models either do not...
research
01/31/2020

Classification of Computer Models with Labelled Outputs

Classification is a vital tool that is important for modelling many comp...
research
11/14/2017

Joint Gaussian Processes for Biophysical Parameter Retrieval

Solving inverse problems is central to geosciences and remote sensing. R...
research
11/14/2019

Scalable Exact Inference in Multi-Output Gaussian Processes

Multi-output Gaussian processes (MOGPs) leverage the flexibility and int...
research
05/02/2018

Modelling cross-dependencies between Spain's regional tourism markets with an extension of the Gaussian process regression model

This study presents an extension of the Gaussian process regression mode...
research
06/30/2015

Gaussian Process for Noisy Inputs with Ordering Constraints

We study the Gaussian Process regression model in the context of trainin...

Please sign up or login with your details

Forgot password? Click here to reset