This aims at providing a set of fast, memory efficient functions to perform spatial interaction modelling, also called gravity modelling. Currently, the doubly and singly constrained models are implemented for canonical set of constraints. Future versions will aim to implement more origin and destination constraints as well. It was developed in the context of studying commuter flows by active travel (cycling & walking ) in Great Britain as part of a project at CASA, UCL.
Not yet on CRAN, so please install the development version of cppSim
with:
# install.packages(C("devtools","pak"))
devtools::install_github("ischlo/cppSim")
# pak::pak("ischlo/cppSim")
The package comes with sample data sets that allow to test the functions right away as well as see the type of input that is recommended.
- flows_test : using the official census data in England from 2011, it’s a 983x983 matrix representing the flows of cyclists and pedestrians from each to each MSOA in London.
- distance_test : the distances between centroids of MSOAs. Computed
with the London road network from OpenStreetMap and using the
cppRouting
package.
Refer to the vignette to find some theory on SIMs and a naive
implementation in R
.
Using the built-in data sets flows_test
and distance_test
, we can
run a test by following the example This is a basic example which shows
you how to solve a common problem:
library(cppSim)
## basic example code
data("flows_test")
data("distance_test")
model_test <- run_model(
flows = flows_test,
distance = distance_test
)
For an example of what can be done with this package, please refer to the publication on active travel spatial interaction models in London for which it was originally developed.
The accompanying code for the analysis is provided in the
ischlo/quant_cycle_walk
repository.
This package has some dependencies that might need manual installation, although the most important external ones have been provided with the source code.
The package uses the armadillo
library, which is imported and linked automatically when the package is
installed.
On the R side, it uses Rcpp
(Eddelbuettel and François 2011) and
RcppArmadillo
(Eddelbuettel and Sanderson 2014).
Compared to the equivalent functions implemented in pure R, it runs
about x10 faster for a
#> [1] ""
Eddelbuettel, Dirk, and Romain François. 2011. “Rcpp : Seamless R and C++ Integration.” Journal of Statistical Software 40 (8). https://doi.org/10.18637/jss.v040.i08.
Eddelbuettel, Dirk, and Conrad Sanderson. 2014. “RcppArmadillo: Accelerating R with High-Performance C++ Linear Algebra.” Computational Statistics & Data Analysis 71: 1054–63. https://doi.org/10.1016/j.csda.2013.02.005.