Grid Search Algorithm with a Zoom

Yukai Yang

2026-02-23

zoomgrid version 1.1.0 (Red Grid)

The package implements the grid search algorithm with a zoom. The grid search algorithm with a zoom aims to help solving difficult optimization problem where there are many local optimisers inside the domain of the target function. It offers suitable initial or starting value for the following optimization procedure, provided that the global optimum exists in the neighbourhood of the initial or starting value. The grid search algorithm with a zoom saves time tremendously in cases with high-dimensional arguments.

You can find the corresponding paper

Modelling Nonlinear Vector Economic Time Series

See section 1.5.4.

How to install

You can either install the stable version from CRAN

install.packages("zoomgrid")

or install the development version from GitHub

devtools::install_github("yukai-yang/zoomgrid")

provided that the package “devtools” has been installed beforehand.

Example

After installing the package, you need to load (attach better say) it by running the code

library(zoomgrid)

You can take a look at all the available functions and data in the package

ls("package:zoomgrid")
#> [1] "build_grid"        "grid_search"       "grid_search_check"

Motivation

Consider the two-dimensional Rastrigin function, which is a non-convex function widely used for testing optimisation algorithms.

where \(x_i \in [-5.12, 5.12]\) and \(A = 10\). It has many local minima and its global minimum is at (0, 0) with the minimum value 0.

Diegotorquemada [Public domain], from Wikimedia Commons
Diegotorquemada [Public domain], from Wikimedia Commons

Graph source: Rastrigin function @ WIKIPEDIA.

We give the function in R:

# Rastrigin function
ndim = 2 # number of dimension
nA = 10 # parameter A
# vx in [-5.12, 5.12]

# minimizer = rep(0, ndim)
# minimum = 0
Rastrigin <- function(vx) return(nA * ndim + sum(vx*vx - nA * cos(2*pi*vx)))

Then let us try the optimization algorithms available in the optim function.

# set seed and initialize the initial or starting value
set.seed(1)
par = runif(ndim, -5.12, 5.12)
cat("start from", par)
#> start from -2.401191 -1.309451

# results from different optimization algorithms
tmp1 = optim(par = par, Rastrigin, method='Nelder-Mead')
tmp2 = optim(par = par, Rastrigin, method='BFGS')
tmp3 = optim(par = par, Rastrigin, method='L-BFGS-B')
tmp4 = optim(par = par, Rastrigin, method='SANN')

tmp1$par; tmp1$value
#> [1] -1.9899136 -0.9949483
#> [1] 4.97479
tmp2$par; tmp2$value
#> [1] -0.9949586  0.9949586
#> [1] 1.989918
tmp3$par; tmp3$value
#> [1] -1.989912e+00  2.913342e-09
#> [1] 3.979831
tmp4$par; tmp4$value
#> [1] 0.97915333 0.01486102
#> [1] 1.088185

None of them are satisfactory…

Build the grid

We need to build grid first for the grid search. For details, see

?build_grid

We build the grid by running

# build the grid
bin = c(from=-5.12, to=5.12, by=.1)
grid = build_grid(bin,bin)