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A surrogate model is an approximation method that mimics the behavior of a computationally
expensive simulation. In more mathematical terms: suppose we are attempting to optimize a function
f(p), but each calculation of f is very expensive. It may be the case we need to solve a PDE for each point or use advanced numerical linear algebra machinery, which is usually costly. The idea is then to develop a surrogate model g which approximates f by training on previous data collected from evaluations of f.
The construction of a surrogate model can be seen as a three-step process:
Sample selection
Construction of the surrogate model
Surrogate optimization
Sampling can be done through QuasiMonteCarlo.jl, all the functions available there can be used in Surrogates.jl.
ALL the currently available surrogate models:
Kriging
Kriging using Stheno
Radial Basis
Wendland
Linear
Second Order Polynomial
Support Vector Machines (Wait for LIBSVM resolution)
Neural Networks
Random Forests
Lobachevsky
Inverse-distance
Polynomial expansions
Variable fidelity
Mixture of experts (Waiting GaussianMixtures package to work on v1.5)
Earth
Gradient Enhanced Kriging
ALL the currently available optimization methods:
SRBF
LCBS
DYCORS
EI
SOP
Multi-optimization: SMB and RTEA
Installing Surrogates package
using Pkg
Pkg.add("Surrogates")
About
Surrogate modeling and optimization for scientific machine learning (SciML)