A Comparison of the Accuracy of Support Vector Machine and Naı̈ve Bayes Algorithms In Spam Classification
@inproceedings{McCue2009ACO, title={A Comparison of the Accuracy of Support Vector Machine and Naı̈ve Bayes Algorithms In Spam Classification}, author={Rita McCue}, year={2009} }
Four implementations of the Naı̈ve Bayes classification algorithm were compared to those of the four different kernels available in an implementation of a Support Vector Machine (SVM) classifier. The two algorithms (and the four versions of each) had their accuracy, speed and effectiveness compared against each other. The Naı̈ve Bayes implementation was done in Matlab, and all plots were created by the built in utilities in the Matlab program. The Support Vector Machine implementation used is…
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