-
Set the default number of discretizations in gdverse to range from 3 to 8 (#15).
-
Optimize the Python integration setup in gdverse (#14).
-
Now
opgd()
returns optimal discretization parameters (#13). -
Force
data
totibble
format in gdverse GDMs model function (#12). -
Align the RID model and algorithm with the original framework presented in paper (#9).
-
Beautify the narrative and other writing details in the vignettes, without making any changes at the user level.
-
Clear the
WORDLIST
to ensure the source code remains clean and organized. -
Migrate the source code from
ausgis/gdverse
tostscl/gdverse
on GitHub.
-
The general variable discretization in gdverse now utilizes
sdsfun::discretize_vector()
(#6). -
Algorithm functions are migrated to
sdsfun
(#8).
-
Update the
RGD
Model API Settings (#2). -
Fix bug caused by changes in default parameters of
opgd
insesu_opgd
(#4). -
Maintain the same results for
st_unidisc
andClassInt::classify_intervals
(#5). -
The parameter
overlaymethod
inrid
andidsa
has been renamed tooverlay
. -
Add
readr
as a dependence of typeSuggests
. -
Recompile vignettes due to internal function changes.
-
When the
discvar
input for theopgd
,rgd
,rid
,spade
functions isNULL
, it is assumed that all independent variables in theformula
need to be discretized. -
Updating the S3 method for plotting various factor detectors to better conform to academic publication requirements.
-
Using new example data in the vignettes for
spade
andidsa
. -
Adding the
esp
function to the package.
-
Unify all vignettes filenames to lowercase.
-
Support for using the
sf
object as input in all models.
- First stable release.