Performance improved. R interface and C++ core have been separated.
Depends to R >= 3.6.0.19e7c475
and inlining access to data. 233063e0.DataVector class to read, write, and pass data without
R.New feature! literanger can now serialize trained random forests using cereal.
The project has been moved to GitLab: https://gitlab.com/stephematician/literanger.
predict now matches the
response type in training ea67c83eread_literanger and
write_literanger for serialization.names_of_always_draw argument 6d31d7f39a3b639a
in particular for ‘maxstat’ 37580d9bUpdate to pass CRAN’s ASAN check
d3f6424)d7f058d)91b6c6d,
0f62d02)b6df5d9)First release
A refactoring and adaptation of the ranger package https://github.com/imbs-hl/ranger for random forests. Has faster prediction mode intended for embedding into the multiple imputation algorithm proposed by Doove et al in:
Doove, L. L., Van Buuren, S., & Dusseldorp, E. (2014). Recursive partitioning for missing data imputation in the presence of interaction effects. Computational statistics & data analysis, 72, 92-104.