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Naive Bayes Classifier 1.0
File ID: 85149






Naive Bayes Classifier 1.0
Download Naive Bayes Classifier 1.0http://www.mathworks.comReport Error Link
License: Shareware
File Size: 10.0 KB
Downloads: 673
User Rating:2 Stars  (1 rating)
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Naive Bayes Classifier 1.0 Description
Description: This code provides a two simple examples of naive Bayes classifier.
In the first example the input are a bunch of positive and negative numbers and their corresponding classes i.e. posi or negi and is tested with random numbers.

In the second example the input are numbers and task is to classify into groups such that # from 1-10 are in class 0, 11-20 are in class 10, # 21-30 in class 20..... # 41-50 in class 40 etc.

I have also given a sample (non-functional) for classification with multiple features

An important thing to note is that the number of training samples should be more than the number of classes; or else you will get an error.

the test data should be with in the range of the sample training data.

License: Shareware

Related: nonfunctional, classification, Multiple, Sample, classify, Groups, Class, Features, important

O/S:BSD, Linux, Solaris, Mac OS X

File Size: 10.0 KB

Downloads: 673



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