Experimental Design for Gaussian Process Regression
A python package for performing experimental design for Gaussian Process Regression
Author: Alex Gorodetsky
Contact: [email protected]
Copyright (c) 2013-2015, Massachusetts Institute of Technology
Copyright (c) 2016-2022, Alex Gorodetsky
License: GPL2
- python3
- numpy
- scipy
- matplotlib (not absolutely necessary but demos require it)
- nlopt: http://ab-initio.mit.edu/wiki/index.php/NLopt (not absolutely necessary)
Experimental design deals with the issue of determining where to obtain new data in order to build accurate models. Gaussian process regression is a useful method to build models of raw data or to build surrogate models for complex computational simulations.
This software is different from most other GP software because it focuses on combining experimental design and Gaussian process regression. It was developed for performing the studies provided in the paper detailing the integrated variance experimental design function
Gorodetsky, Alex, and Youssef Marzouk. "Mercer kernels and integrated variance experimental design: Connections between gaussian process regression and polynomial approximation." SIAM/ASA Journal on Uncertainty Quantification 4.1 (2016): 796-828.
The current software contains the following options for kernels and experimental design cost functions (though adding new kernels and cost functions is fairly trivial).
- Squared exponential
- isotropic
- automatic relevance determination
- Isotropic Matern kernel
- Mehler Kernel
- Integrated Variance
- Conditional Entropy
- Mutual Information