A Proposal Phishing Attack Detection System on Twitter

Author:

Djaballah kamel Ahsene1,Boukhalfa Kamel2,Guelmaoui Mohamed Amine1,Saidani Amir1,Ramdane Yassine3

Affiliation:

1. University of Science and Technology Houari Boumediene, Algiers, Algeria

2. University of Sciences and Technology Houari Boumediene, Algiers, Algeria

3. ERIC Laboratory EA 3083, University of Lyon 2, Lyon, France

Abstract

The security of personal data is crucial for a company or any individual. Phishing is one of the most common and dangerous cybercrime attacks. These attacks aim to steal information used by individuals and organizations using social engineering, which is a key point for the success of the phishing attack. Even though there are several systems and solutions, the amount of personal information stolen continues to increase as cyberattacks become more difficult to detect. This paper consists of a broad review to study the work carried out in the fight against phishing and the identification of vulnerabilities in existing systems to achieve better efficiency. The authors focused on the social medium Twitter to study the phishing attacks passing through this medium, and they present their new design, which is based on new features. The classification of the approach includes 23 features and uses the MLP artificial neural network (ANN MLP) algorithm. Experiments show that the system is effective at detecting phishing sites, with a 96% success rate using recent data.

Publisher

IGI Global

Subject

Information Systems

Reference51 articles.

1. URL Phishing Detection using Machine Learning Techniques based on URLs Lexical Analysis

2. Akbar, N. (2014). Analyzing Persuasion Principles in Phishing Emails [Unpublished master’s thesis]. University of Twente, Enschede, Overijssel, Netherlands.

3. American Psychological Association APA. (2017). Understanding How Persuasion Works Can Make Consumers More Savvy.https://www.apa.org/news/press/releases/2017/08/persuasion-consumers

4. Anti-Phishing Working Group. (2020). Phishing Activity Trends Report 3rd Quarter 2020.https://docs.apwg.org/reports/apwg_trends_report_q3_2020.pdf

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