funGp: An R Package for Gaussian Process Regression with Scalar and Functional Inputs

Dublin Core

Title

funGp: An R Package for Gaussian Process Regression with Scalar and Functional Inputs

Subject

: Gaussian process, metamodeling, functional inputs, computer experiments,

Description

This article introduces funGp, an R package which handles regression problems involving multiple scalar and/or functional inputs, and a scalar output, through the Gaussian
process model. This is particularly of interest for the design and analysis of computer
experiments with expensive-to-evaluate numerical codes that take as inputs regularly sampled time series. Rather than imposing any particular parametric input-output relationship in advance (e.g., linear, polynomial), Gaussian process models extract this information directly from the data. The package offers built-in dimension reduction, which helps
to simplify the representation of the functional inputs and obtain lighter models. It also
implements an ant colony based optimization algorithm which supports the calibration
of multiple structural characteristics of the model such as the state of each input (active
or inactive) and the type of kernel function, while seeking for greater prediction power.
The implemented methods are tested and applied to a real case in the domain of marine
flooding

Creator

José Betancourt

Source

https://www.jstatsoft.org/article/view/v109i05

Date

May 2024

Contributor

Fajar bagus W

Format

PDF

Language

Englih

Type

Text

Files

Citation

José Betancourt , “funGp: An R Package for Gaussian Process Regression with Scalar and Functional Inputs,” Repository Horizon University Indonesia, accessed April 4, 2025, https://repository.horizon.ac.id/items/show/8330.