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CORElearn (version 1.56.0)

Classification, Regression and Feature Evaluation

Description

A suite of machine learning algorithms written in C++ with the R interface contains several learning techniques for classification and regression. Predictive models include e.g., classification and regression trees with optional constructive induction and models in the leaves, random forests, kNN, naive Bayes, and locally weighted regression. All predictions obtained with these models can be explained and visualized with the 'ExplainPrediction' package. This package is especially strong in feature evaluation where it contains several variants of Relief algorithm and many impurity based attribute evaluation functions, e.g., Gini, information gain, MDL, and DKM. These methods can be used for feature selection or discretization of numeric attributes. The OrdEval algorithm and its visualization is used for evaluation of data sets with ordinal features and class, enabling analysis according to the Kano model of customer satisfaction. Several algorithms support parallel multithreaded execution via OpenMP. The top-level documentation is reachable through ?CORElearn.

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Version

Install

install.packages('CORElearn')

Monthly Downloads

4,338

Version

1.56.0

License

GPL-3

Maintainer

Marko Robnik-Sikonja

Last Published

March 23rd, 2021

Functions in CORElearn (1.56.0)

destroyModels

Destroy single model or all CORElearn models
classDataGen

Artificial data for testing classification algorithms
cvGen

Cross-validation and stratified cross-validation
auxTest

Test functions for manual usage
classPrototypes

The typical instances of each class - class prototypes
CORElearn-internal

Internal structures of CORElearn C++ part
CORElearn-package

R port of CORElearn
CoreModel

Build a classification or regression model
attrEval

Attribute evaluation
calibrate

Calibration of probabilities according to the given prior.
getCoreModel

Conversion of model to a list
noEqualRows

Number of equal rows in two data sets
ordDataGen

Artificial data for testing ordEval algorithms
paramCoreIO

Input/output of parameters from/to file
preparePlot

Prepare graphics device
getRpartModel

Conversion of a CoreModel tree into a rpart.object
rfOOB

Out-of-bag performance estimation for random forests
getRFsizes

Get sizes of the trees in RF
ordEval

Evaluation of ordered attributes
rfOutliers

Random forest based outlier detection
predict.CoreModel

Prediction using constructed model
testCore

Verification of the CORElearn installation
helpCore

Description of parameters.
modelEval

Statistical evaluation of predictions
reliabilityPlot

Plots reliability plot of probabilities
infoCore

Description of certain CORElearn parameters
regDataGen

Artificial data for testing regression algorithms
versionCore

Package version
display.CoreModel

Displaying decision and regression trees
rfAttrEval

Attribute evaluation with random forest
plot.ordEval

Visualization of ordEval results
saveRF

Saves/loads random forests model to/from file
plot.CoreModel

Visualization of CoreModel models
discretize

Discretization of numeric attributes
rfProximity

A random forest based proximity function
rfClustering

Random forest based clustering