Knowledge discovery by accuracy maximization


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Documentation for package ‘KODAMA’ version 0.0.1

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classprob Determines the Prevalence of Each Class
core Maximization of Cross-Validateed Accuracy Methods
dinisurface Ulisse Dini Data Set Generator
helicoid Helicoid Data Set Generator
kfold k-Fold Partitioning
KNN.CV Cross-Validation with k-Nearest Neighbors Classifier.
knn.dist Calculates the Distances for KNN Predictions
knn.predict KNN Prediction Routine using Pre-Calculated Distances
knn.probability KNN Prediction Probability Routine using Pre-Calculated Distances
KODAMA Knowledge Discovery by Accuracy Maximization
lymphoma Lymphoma Gene Expression Dataset
majority Determines Majority Class
MetRef Nuclear Magnetic Resonance Spectra of Urines
normalization Normalization methods
PCA.CA.KNN.CV Cross-Validation with PCA-CA-kNN.
PLS.SVM.CV Cross-Validation with Support Vector Machine.
scaling Scaling methods
spirals Spirals Data Set Generator
swissroll Swiss Roll Data Set Generator
transformy Conversion Classification Vector to Matrix
USA State of the Union Data Set