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I have tried to classify using both a NaiveBayes classifier and a NaiveBayesSimple classifier, using the following data:

@attribute a real
@attribute b {yes, no}                                                                                        

@data                                                                                                            
1,yes
3,yes
5,yes
2,yes
1,yes
4,no
7,no
5,no
8,no
9,no

When using the NaiveBayesSimple classifier, I get the mean and variance values I expect:

=== Classifier model (full training set) ===

Naive Bayes (simple)

Class yes: P(C) = 0.5       

Attribute a
Mean: 2.4           Standard Deviation: 1.67332005



Class no: P(C) = 0.5       

Attribute a
Mean: 6.6           Standard Deviation: 2.07364414

However, when using the NaiveBayes classifier, I get different values:

=== Classifier model (full training set) ===

Naive Bayes Classifier

            Class
Attribute         yes     no
                (0.5)  (0.5)
=============================
a
  mean          2.5143 6.6286
  std. dev.     1.3328 1.8286
  weight sum         5      5
  precision     1.1429 1.1429

I was wondering what the cause of the shifting mean/SD was? I've read through the paper that the NaiveBayes classifier is based on: http://citeseer.ist.psu.edu/viewdoc/summary?doi=10.1.1.8.3257 and can't see any reason for it there.

Thanks

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1 Answer 1

The two algorithms differ from each other.

Naive bayes in Weka is defined as follows:

NAME weka.classifiers.bayes.NaiveBayes

SYNOPSIS Class for a Naive Bayes classifier using estimator classes. Numeric estimator precision values are chosen based on analysis of the training data. For this reason, the classifier is not an UpdateableClassifier (which in typical usage are initialized with zero training instances) -- if you need the UpdateableClassifier functionality, use the NaiveBayesUpdateable classifier. The NaiveBayesUpdateable classifier will use a default precision of 0.1 for numeric attributes when buildClassifier is called with zero training instances.

For more information on Naive Bayes classifiers, see

George H. John, Pat Langley: Estimating Continuous Distributions in Bayesian Classifiers. In: Eleventh Conference on Uncertainty in Artificial Intelligence, San Mateo, 338-345, 1995.

OPTIONS debug -- If set to true, classifier may output additional info to the console.

displayModelInOldFormat -- Use old format for model output. The old format is better when there are many class values. The new format is better when there are fewer classes and many attributes.

useKernelEstimator -- Use a kernel estimator for numeric attributes rather than a normal distribution.

useSupervisedDiscretization -- Use supervised discretization to convert numeric attributes to nominal ones.

and NaiveBayesSimple is defined as follows:

NAME weka.classifiers.bayes.NaiveBayesSimple

SYNOPSIS Class for building and using a simple Naive Bayes classifier.Numeric attributes are modelled by a normal distribution.

For more information, see

Richard Duda, Peter Hart (1973). Pattern Classification and Scene Analysis. Wiley, New York.

OPTIONS debug -- If set to true, classifier may output additional info to the console.

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