Provide a New Way to Detect emails's Spam and Phishing and Bank Phishing Using Genetic Algorithms and Prohibited Search
Not all phishing attacks are always done in the form of website forgery and telephone phishing. Emails and messages that appear to be sent by the bank and receive information from the user can also be a phishing attack. Feature selection and sample selection are two very important issues in the data processing stage in detecting malicious emails. In particular, identifying spam without data reduction will not be nearly as accurate in the results. Most articles and research have focused on one of these issues, and there are few articles that have worked in combination to detect malicious emails. Therefore, the purpose of the present study is to provide a method to reduce the data in identifying emails by selecting features and samples simultaneously. In the proposed method in this paper, the forbidden search algorithm and the genetic algorithm are used in combination and simultaneously. For the suitability of this method, the evaluation vector machine evaluation function was used. The results showed that the detection rate of spam and e-mails in LineSpam and UCI datasets was 97.28, which was the highest possible value compared to other algorithms proposed in previous studies.
-
Cognitive Concepts of Employees in the Face of Artificial Intelligence
*
Journal of Police Artificial Intelligence, Summer 2025 -
Marketing Strategies in the Simulated World: Narrative, Data, and Mixed Reality
*, Seyyed Mohammadsadeq Milani, Ezatollah Abbasian
Journal of Intelligent Marketing Management, Summer 2025