Search for a command to run...
With the increasing dependence on digital platforms for communication, financial transactions, and social interactions, cybersecurity threats have grown significantly in recent years. Among these threats, phishing attacks and online stalking have emerged as major concerns due to theirability to exploit user behavior and compromise sensitive information. Phishing attacks deceive users into revealing confidential data through fake websites,emails, or messages, while stalker activities involve monitoring and analyzing user interactions formalicious purposes. Traditional cybersecurity solutions rely on static rule based mechanisms, which are often ineffective againstmodern, evolving attack techniques. These systems fail to adapt to dynamic patterns and lack real-timedetection capabilities, vulnerability for users.resulting inincreased This research proposes an intelligent system that integrates phishing detection and mid-stalker analysisusing artificial intelligence techniques. The system utilizes machine learning algorithms, natural language processing, and behavioral pattern analysis to identify malicious URLs, detect suspicious email content, and monitor abnormal user activity. By combining contentbased and behavior-based detection, the system provides a comprehensive security solution. INDEX TERMS: Phishing Detection, Cybersecurity, Machine Learning, NLP, Behavioral Analysis,Anomaly Detection, AI Security
Published in: International Scientific Journal of Engineering and Management
Volume 05, Issue 03, pp. 1-9
DOI: 10.55041/isjem05952