• Corpus ID: 212487515

SPAM E-MAIL DETECTION USING CLASSIFIERS AND ADABOOST TECHNIQUE

@inproceedings{Badgujar2017SPAMED,
  title={SPAM E-MAIL DETECTION USING CLASSIFIERS AND ADABOOST TECHNIQUE},
  author={Nilam Badgujar and Namrata Chaudhari and Ronit Chougule and Shraddha Malve},
  year={2017}
}
The Internet has turned our existence upside down and has dramatically revolutionalized many different fields. Emails, social networking sites, surfing all have become a part and parcel of our lives. Emails are the fastest way to send information from one place to another. Whatever may be the work on the Internet, emails are involved everywhere. But, nowadays, emails are getting more prone to exploitation due to malicious attacks which include spam mails. Spam is flooding the whole internet… 

Tables from this paper

Analysis and result of classification algorithm on email classification
In this time, one of the most and fastest forms of communication is electronic mail or what we call e-mail. However, the increase of e-mail users has resulted in the dramatic increase of spam emails

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