klaR (version 0.5-5)

predict.NaiveBayes: Naive Bayes Classifier

Description

Computes the conditional a-posterior probabilities of a categorical class variable given independent predictor variables using the Bayes rule.

Usage

## S3 method for class 'NaiveBayes':
predict(object, newdata, threshold = 0.001, ...)

Arguments

object
An object of class "naiveBayes".
newdata
A dataframe with new predictors.
threshold
Value replacing cells with 0 probabilities.
...
passed to dkernel function if neccessary.

Value

  • A list with the conditional a-posterior probabilities for each class and the estimated class are returned.

concept

  • Naive Bayes Classification
  • Kernel estimated densities

Details

This implementation of Naive Bayes as well as this help is based on the code by David Meyer in the package e1071 but extended for kernel estimated densities. The standard naive Bayes classifier (at least this implementation) assumes independence of the predictor variables. For attributes with missing values, the corresponding table entries are omitted for prediction.

See Also

NaiveBayes,dkernelnaiveBayes,qda

Examples

Run this code
data(iris)
m <- NaiveBayes(Species ~ ., data = iris)
predict(m)

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