rminer - Data Mining Classification and Regression Methods
Facilitates the use of data mining algorithms in
classification and regression (including time series
forecasting) tasks by presenting a short and coherent set of
functions. Versions: 1.4.8 improved help, several warning and
error code fixes (more stable version, all examples run
correctly); 1.4.7 improved Importance function and examples,
minor error fixes; 1.4.6 / 1.4.5 / 1.4.4 new automated machine
learning (AutoML) and ensembles, via improved fit(), mining()
and mparheuristic() functions, and new categorical
preprocessing, via improved delevels() function; 1.4.3 new
metrics (e.g., macro precision, explained variance), new
"lssvm" model and improved mparheuristic() function; 1.4.2 new
"NMAE" metric, "xgboost" and "cv.glmnet" models (16
classification and 18 regression models); 1.4.1 new tutorial
and more robust version; 1.4 - new classification and
regression models, with a total of 14 classification and 15
regression methods, including: Decision Trees, Neural Networks,
Support Vector Machines, Random Forests, Bagging and Boosting;
1.3 and 1.3.1 - new classification and regression metrics; 1.2
- new input importance methods via improved Importance()
function; 1.0 - first version.