Litcius/Paper detail

Survey and comparative analysis of phishing detection techniques: current trends, challenges, and future directions

Ashvini Jadhav, Pankaj Chandre

2025IAES International Journal of Artificial Intelligence15 citationsDOIOpen Access PDF

Abstract

In the age of digital communication, scams such as phishing continue to be a problem, necessitating the need for ever-more-advanced detection techniques to safeguard sensitive data. Examining several methods now in use, this review article groups them according to the application (email, web server, mail server, or browser-based). It explores the advantages and disadvantages of behavior-based, heuristic-based, machine learning (ML)-based, and signature-based techniques and offers a comparative evaluation of their efficacy. The essay delves deeper into the latest developments in phishing detection research, such as ML-powered social media exploration and real-time website analysis. The evaluation goes beyond just identifying detecting techniques; it also includes a data-driven analysis. In particular, random forest and support vector machines are ML algorithms that regularly produce results with high accuracy for detecting phishing attempts. Metrics like as recall, F1-score, and precision show how well these algorithms. Furthermore, specialised techniques such as heuristic-based and cantina-based approaches provide remarkable performance, underscoring the possibility of additional research in this field. Future research explores improved phishing detection through: better accuracy with ML, integrating new technologies, analyzing user behavior. A hybrid approach combining these techniques offers a stronger defense.

Topics & Concepts

Computer scienceCurrent (fluid)Data sciencePhishingData miningWorld Wide WebThe InternetOceanographyGeologySpam and Phishing DetectionImbalanced Data Classification Techniques
Survey and comparative analysis of phishing detection techniques: current trends, challenges, and future directions | Litcius