robust geographical detector(RGD) model
rgd(
formula,
data,
discvar = NULL,
discnum = 3:8,
minsize = 1,
strategy = 2L,
increase_rate = 0.05,
cores = 1
)
A list.
factor
robust power of determinant
opt_disc
optimal robust discrete results
allfactor
factor detection results corresponding to different number of robust discreteizations
alldisc
all robust discrete results
A formula of RGD model.
A data.frame
, tibble
or sf
object of observation data.
Name of continuous variable columns that need to be discretized. Noted that
when formula
has discvar
, data
must have these columns. By default, all independent
variables are used as discvar
.
A numeric vector of discretized classes of columns that need to be discretized.
Default all discvar
use 3:8
.
(optional) The min size of each discretization group. Default all use 1
.
(optional) Optimal discretization strategy. When strategy
is 1L
, choose the highest
q-statistics to determinate optimal spatial data discretization parameters. When strategy
is 2L
,
The optimal discrete parameters of spatial data are selected by combining LOESS model.
(optional) The critical increase rate of the number of discretization. Default is 5%
.
(optional) Positive integer (default is 1). When cores are greater than 1, use multi-core parallel computing.
Wenbo Lv lyu.geosocial@gmail.com
Zhang, Z., Song, Y.*, & Wu, P., 2022. Robust geographical detector. International Journal of Applied Earth Observation and Geoinformation. 109, 102782. DOI: 10.1016/j.jag.2022.102782.
if (FALSE) {
## The following code needs to configure the Python environment to run:
data('sim')
g = rgd(y ~ .,
data = dplyr::select(sim,-dplyr::any_of(c('lo','la'))),
discnum = 3:6, cores = 1)
g
}
Run the code above in your browser using DataLab