Author/Authors :
Soleimanian Gharehchopogh, Farhad Department of Computer Engineering - Faculty of Engineering - Islamic Azad University, Urmia , Mousavi, Keyvan Department of Computer Engineering - Urmia Branch Islamic Azad University, Urmia, IRAN
Abstract :
With the advent of the internet, along with email,
and social networking, there are some new issues that have
caused vulnerability of users against attackers. Internet
users face a lot of undesirable emails and their data privacy
and security is in danger. Spammers are often sent to users
by intruders and sales markets, and most of the time they
target spam, harassment, and abuse of user data. With
increasing attacks on computer networks, attempts to
rebuild computer networks and detect spam emails are
important. Hackers use the identities of users by obtaining
their personal information and account of users for
malicious and subversive actions. Intruders are attempting
to expose, remove, or change user information by opening
encrypted information. Therefore, it is very important to
detect spam in the early stages. In this paper, a new
approach is proposed based on a hybridization of Particle
Swarm Optimization (PSO) with Fruit Fly Optimization
(FFO) to email spam detection. This paper shows a Feature
Selection (FS) based on PSO, which decreases
dimensionality and improves the accuracy of email spam
classification. The PSO searches the feature space for the
best feature subsets. Experiments results on the public
spambase dataset show that the accuracy of the proposed
model is 92.21%, which is better in comparison with others
models, such as PSO, Genetic Algorithm (GA), and Ant
Colony Optimization (ACO).
Keywords :
Fruit fly optimization , Particle swarm optimization , Feature selection , Email spam detection