MapReduce based RDF assisted distributed SVM for high throughput spam filtering
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چکیده
منابع مشابه
Survey of Spam Filtering Techniques and Tools, and MapReduce with SVM
Abstract Spam is unsolicited, junk email with variety of shapes and forms. To filter spam, various techniques are used. Techniques like Naïve Bayesian Classifier, Support Vector Machine (SVM) etc. are often used. Also, a number of tools for spam filtering either paid or free are available. Amongst all techniques SVM is mostly used. SVM is computationally intensive and for training it can’t work...
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