GPdoemd: a Python package for design of experiments for model discrimination

10/05/2018
by   Simon Olofsson, et al.
0

Model discrimination identifies a mathematical model that usefully explains and predicts a given system's behaviour. Researchers will often have several models, i.e. hypotheses, about an underlying system mechanism, but insufficient experimental data to discriminate between the models, i.e. discard inaccurate models. Given rival mathematical models and an initial experimental data set, optimal design of experiments suggests maximally informative experimental observations that maximise a design criterion weighted by prediction uncertainty. The model uncertainty requires gradients, which may not be readily available for black-box models. This paper (i) proposes a new design criterion using the Jensen-Rényi divergence, and (ii) develops a novel method replacing black-box models with Gaussian process surrogates. Using the surrogates, we marginalise out the model parameters with approximate inference. Results show these contributions working well for both classical and new test instances. We also (iii) introduce and discuss GPdoemd, the open-source implementation of the Gaussian process surrogate method.

READ FULL TEXT

page 1

page 2

page 3

page 4

research
02/07/2021

Design of Dynamic Experiments for Black-Box Model Discrimination

Diverse domains of science and engineering require and use mechanistic m...
research
12/16/2019

Learning Arbitrary Quantities of Interest from Expensive Black-Box Functions through Bayesian Sequential Optimal Design

Estimating arbitrary quantities of interest (QoIs) that are non-linear o...
research
02/06/2023

Uncertainty estimation for time series forecasting via Gaussian process regression surrogates

Machine learning models are widely used to solve real-world problems in ...
research
09/29/2017

Adaptive Generation-Based Evolution Control for Gaussian Process Surrogate Models

The interest in accelerating black-box optimizers has resulted in severa...
research
04/26/2021

Control of Mechanical Systems via Feedback Linearization Based on Black-Box Gaussian Process Models

In this paper, we consider the use of black-box Gaussian process (GP) mo...
research
11/21/2022

Active Discrimination Learning for Gaussian Process Models

The paper covers the design and analysis of experiments to discriminate ...
research
05/02/2017

Experimental Design for Non-Parametric Correction of Misspecified Dynamical Models

We consider a class of misspecified dynamical models where the governing...

Please sign up or login with your details

Forgot password? Click here to reset