Random KNN Classification and Regression


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Documentation for package ‘rknn’ version 1.2-1

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rknn-package Random KNN Classification and Regression
bestset Extract the Best Subset of Feature from Selection Process
confusion Classification Confusion Matrix and Accuracy
confusion2acc Classification Confusion Matrix and Accuracy
cv.coef Coefficient of Variation
eta Coverage Probability
fitted.rknn Extract Model Fitted Values
lambda Compute Number of Silent Features
normalize.decscale Data Normalization
normalize.sigmoidal Data Normalization
normalize.softmax Data Normalization
normalize.unit Data Normalization
plot.rknnBeg Plot Function for Recursive Backward Elimination Feature Selection
plot.rknnBel Plot Function for Recursive Backward Elimination Feature Selection
plot.rknnSupport Plot Function for Support Criterion
prebestset Extract the Best Subset of Feature from Selection Process
predicted Prediced Value From a Linear Model
PRESS Predicted Residual Sum of Squares
print.rknn Print method for Random KNN
print.rknnBE Print Method for Recursive Backward Elimination Feature Selection
print.rknnSupport Print Method for Random KNN Support Criterion
r Choose number of KNNs
rknn Random KNN Classification and Regression
rknn.cv Random KNN Classification and Regression
rknnBeg Backward Elimination Feature Selection with Random KNN
rknnBel Backward Elimination Feature Selection with Random KNN
rknnReg Random KNN Classification and Regression
rknnRegSupport Support Criterion
rknnSupport Support Criterion
rsqp Predicted R-square
varNotUsed Features Used or Not Used in Random KNN
varUsed Features Used or Not Used in Random KNN