AI-Based Phishing Website Detection using Machine Learning
- Version
- Download 16
- File Size 741.85 KB
- File Count 1
- Create Date 19 March 2026
- Last Updated 19 March 2026
AI-Based Phishing Website Detection using Machine Learning
Y Mohammed Iqbal1, S. Syed Ahamed Wasik2, Dr. S. Peerbasha3,
Dr. M. Rajakumar4, Dr. M. Mohamed Surputheen5
Department of Computer Science, Jamal Mohamed College, Affiliated to Bharathidasan University, Trichy-20,
Tamil Nadu, India
Abstract - Phishing websites are a problem for cybersecurity because they pretend to be real online services to get sensitive information from users like login details and financial information. The people who make these phishing websites can. Shut them down quickly which makes it hard for traditional methods to detect them. To solve this problem this paper talks about a system that uses machine learning to detect phishing websites by looking at the website address and domain. This way the system can detect phishing websites without having to look at the webpage. The system uses a set of data with 11,055 website addresses and 31 special features to test how well it works. These features look at things like the structure of the website address, who registered the domain and things that might indicate phishing. The system uses two kinds of classifiers Logistic Regression and Random Forest to test how well it can detect phishing websites. The system also uses an ensemble model that combines the results from both classifiers to make the predictions more reliable. The results show that thisensemble model is really good at detecting phishing websites and can balance being precise and catching all the phishing websites. The system is also good at telling the difference between fake websites. The people who made the system also created a user interface that can analyze website addresses in time which makes it more useful and practical. The system is a solution for detecting phishing websites in the real world and can be used in many different situations. Phishing websites are a problem but this system can help solve it. The system uses machine learning and a special ensemble model to detect phishing websites. It is really good, at it. Phishing websites will continue to be a problem. With this system we can detect them more easily.
Keywords: Phishing Website Detection, Machine Learning, URL-Based Feature Extraction, Cybersecurity, URL Classification, Random Forest Classifier, Logistic Regression, XGBoost Algorithm, Fusion Model, Soft Voting Ensemble, Attack Type Identification, Credential Phishing, Financial Fraud Detection, ROC Curve Analysis, AUC PerformanceMetric
Download