kernstadapt is an R package for adaptive kernel estimation of the intensity of spatio-temporal point processes.
kernstadapt implements functionalities to estimate the intensity of a spatio-temporal point pattern by kernel smoothing with adaptive bandwidth methodology when each data point has its own bandwidth associated as a function of the crowdedness of the region (in space and time) in which the point is observed.
The package presents the intensity estimation through a direct estimator and the partitioning algorithm methodology presented in González and Moraga (2022).
The stable version on CRAN can be installed using:
{r, eval=FALSE} install.packages("kernstadapt")
The development version can be installed using devtools:
{r, eval=FALSE} # install.packages("devtools") # if not already installed devtools::install_github("jagm03/kernstadapt") library(kernstadapt)
Direct adaptive estimation of the intensity
dens.direct()
(non-separable)dens.direct.sep()
(separable)Adaptive intensity estimation using a partition algorithm
dens.par()
(non-separable)dens.par.sep()
(separable)Bandwidths calculation
bw.abram.temp()
(temporal)Separability test
separability.test()