Filtering and Detection of Real-Time Spam Mail Based on a Bayesian Approach in University Networks

Author:

Sharabov Maksim1,Tsochev Georgi1ORCID,Gancheva Veska2,Tasheva Antoniya3

Affiliation:

1. Department of Information Technologies in Industry, Faculty of Computer Systems and Technology, Technical University of Sofia, 1000 Sofia, Bulgaria

2. Department of Programming and Computer Technologies, Faculty of Computer Systems and Technology, Technical University of Sofia, 1000 Sofia, Bulgaria

3. Department of Computer Systems, Faculty of Computer Systems and Technology, Technical University of Sofia, 1000 Sofia, Bulgaria

Abstract

With the advent of digital technologies as an integral part of today’s everyday life, the risk of information security breaches is increasing. Email spam, commonly known as junk email, continues to pose a significant challenge in the digital realm, inundating inboxes with unsolicited and often irrelevant messages. This relentless influx of spam not only disrupts user productivity but also raises security concerns, as it frequently serves as a vehicle for phishing attempts, malware distribution, and other cyber threats. The prevalence of spam is fueled by its low-cost dissemination and its ability to reach a wide audience, exploiting vulnerabilities in email systems. This paper marks the inception of an in-depth investigation into the viability and potential implementation of a robust spam filtering and prevention system tailored explicitly to university networks. With the escalating threat of email-based hacking attacks and the incessant deluge of spam, the need for a comprehensive and effective defense mechanism within academic institutions becomes increasingly imperative. In exploring potential solutions, this study delves into the applicability and efficacy of Bayesian filters, a class of probabilistic classifiers renowned for their aptitude in distinguishing between legitimate emails and spam messages. Bayesian filters utilize statistical algorithms to analyze email content, learning patterns and features to accurately categorize incoming emails.

Funder

European Regional Development Fund

Publisher

MDPI AG

Reference45 articles.

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2. (2023, September 14). Number of Sent and Received E-Mails per Day Worldwide from 2017 to 2026. Available online: https://www.statista.com/statistics/456500/daily-number-of-e-mails-worldwide/.

3. (2023, September 14). 23 Email Spam Statistics to Know in 2023. Available online: https://www.mailmodo.com/guides/email-spam-statistics/.

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5. (2023, September 29). MUD1. Available online: https://en.wikipedia.org/wiki/MUD1.

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