A Survey of Email Spam Filtering Methods

Madhvi Sharma, Sumit Sharma

Abstract


E-mail is one of the most secure medium for online communication and transferring data or messages through the web. An overgrowing increase in popularity, the number of unsolicited data has also increased rapidly. To filtering data, different approaches exist which automatically detect and remove these untenable messages. There are several numbers of email spam filtering technique such as Knowledge-based technique, Clustering techniques, Learning based technique, Heuristic processes and so on. This paper illustrates a survey of different existing email spam filtering system regarding Machine Learning Technique (MLT) such as Naive Bayes, SVM, K-Nearest Neighbor, Bayes Additive Regression, KNN Tree, and rules. However, here we present the classification, evaluation and comparison of different email spam filtering system

Keywords: e-mail spam, spam filtering methods, machine learning technique, classification, SVM, ANN


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ISSN (Paper)2224-5774 ISSN (Online)2225-0492

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