Phishing e-mail detection by using deep learning algorithms
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Date
2018
Authors
Hassanpour, Reza
Doğdu, Erdoğan
Choupani, Roya
Göker, Onur
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Abstract
Phishing e-mails are considered as spam e-mails, which aim to
collect sensitive personal information about the users via network.
Since the main purpose of this behavior is mostly to harm users
financially, it is vital to detect these phishing or spam e-mails immediately to prevent unauthorized access to users’ vital information.
To detect phishing e-mails, using a quicker and robust classification method is important. Considering the billions of e-mails on
the Internet, this classification process is supposed to be done in a
limited time to analyze the results. In this work, we present some
of the early results on the classification of spam email using deep
learning and machine methods. We utilize word2vec to represent
emails instead of using the popular keyword or other rule-based
methods. Vector representations are then fed into a neural network
to create a learning model. We have tested our method on an open
dataset and found over 96% accuracy levels with the deep learning classification methods in comparison to the standard machine
learning algorithms.
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Machine Learning, Deep Learning, Supervised Learning, Classification, Malware Detection
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Proc. of the ACMSE 2018 Conference