ODRF 0.0.4
- Fixed function VarImp(), adding the method of measuring the
importance of variables with node purity, and now VarImp() can be used
for both class ODT and ODRF.
- When the argument “Xcat ! = 0”, i.e., the category variable in
predictor X is transformed to one-of-K encode. however for the argument
“NodeRotateFun=‘RotMatRF’ (‘RotMatRand’)“ run error, we have now fixed
it.
- Added predicted values of training data for class ODT and ODRF.
- Fixed issue related to function predict.ODRF() when argument
“weight.tree = TRUE”.
- Optimized some other known issues.
ODRF 0.0.3
- The function predicate.ODT() runs error when ODT is not split
(depth=1), and we have fixed this bug.
- We have fixed the function predict.ODRF() with arguments numOOB and
weight.tree related issues.
- We have fixed the functions plot.ODT(), VarImp() and
plot.VarImp().
- We have fixed the argument ‘lambda’ of the functions ODT() and
ODRF().
ODRF 0.0.2
- We have now explained CART and Random Forest in the description
text.
- We have changed the Date field to a more recent date.
- We have now exported the functions RandRot() and defaults(), and no
longer need ODRF:::
- We have removed par from plot.VarImp() and added on.exit to
plot.prune.ODT(), and checked the code to make sure that it does not
change the user’s options, including par or working directory.
- We have removed the random seed number in functions ODRF(),
poune.ODRF(), online.ODRF() and plot_ODT_depth().
ODRF 0.0.1
- Added a
NEWS.md
file to track changes to the
package.
- This is the first fully-functioning version of the package. It
currently has no ERRORs, WARNINGs, or NOTEs from devtools::check().