magi: A Package for Inference of Dynamic Systems from Noisy and Sparse Data via Manifold-Constrained Gaussian Processes

Dublin Core

Title

magi: A Package for Inference of Dynamic Systems from Noisy and Sparse Data via Manifold-Constrained Gaussian Processes

Subject

ordinary differential equations, Bayesian inference, unobserved components.

Description

This article presents the magi software package for the inference of dynamic systems.
The focus of magi is on dynamics modeled by nonlinear ordinary differential equations
with unknown parameters. While such models are widely used in science and engineering, the available experimental data for parameter estimation may be noisy and sparse.
Furthermore, some system components may be entirely unobserved. magi solves this inference problem with the help of manifold-constrained Gaussian processes within a Bayesian
statistical framework, whereas unobserved components have posed a significant challenge
for existing software. We use several realistic examples to illustrate the functionality of
magi. The user may choose to use the package in any of the R, MATLAB, and Python
environments.

Creator

Samuel W. K. Wong

Source

https://www.jstatsoft.org/article/view/v109i04

Date

May 2024

Contributor

Fajar bagus W

Format

PDF

Language

English

Type

Text

Files

Citation

Samuel W. K. Wong, “magi: A Package for Inference of Dynamic Systems from Noisy and Sparse Data via Manifold-Constrained Gaussian Processes,” Repository Horizon University Indonesia, accessed April 4, 2025, https://repository.horizon.ac.id/items/show/8329.