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Phishing Websites Detection System using Machine Learning Techniques | IEEE Machine Learning Project
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IEEE Machine Learning Projects 2025 2026 - Phishing Websites Detection System using Machine Learning Techniques | IEEE Machine Learning Project

Master Cutting-Edge Machine Learning and Blockchain Innovations: Transform Ideas into Impactful Projects!

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What you'll learn

Learn techniques for detecting diseases using machine learning and image processing.
Understand fraud detection systems with machine learning applications in finance and cybersecurity.
Explore blockchain applications for secure data management and voting systems.
Develop skills in creating intelligent traffic and disaster management systems using machine learning.

This course includes

  • 33 hours of video
  • Certificate of completion
  • Access on mobile and TV

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Phishing Websites Detection System using Machine Learning Techniques | IEEE Machine Learning Project To get This Project - https://bit.ly/3r3wYCo ABSTRACT In this paper, we propose a feature-free method for detecting phishing websites using the Normalized Compression Distance (NCD), a parameter-free similarity measure which computes the similarity of two websites by compressing them, thus eliminating the need to perform any feature extraction. It also removes any dependence on a specific set of website features. This method examines the HTML of webpages and computes their similarity with known phishing websites, in order to classify them. We use the Furthest Point First algorithm to perform phishing prototype extractions, in order to select instances that are representative of a cluster of phishing webpages. We also introduce the use of an incremental learning algorithm as a framework for continuous and adaptive detection without extracting new features when concept drift occurs. On a large dataset, our proposed method significantly outperforms previous methods in detecting phishing websites, with an AUC score of 98.68%, a high true positive rate (TPR) of around 90%, while maintaining a low false positive rate (FPR) of 0.58%. Our approach uses prototypes, eliminating the need to retain long term data in the future, and is feasible to deploy in real systems with a processing time of roughly 0.3 seconds. More Projects - https://bit.ly/495LVbb Contact us on - +91 9363932473 Ieee Xpert, India. The Best Bulk Service Provider for IEEE Solutions Including Packages ======================= * Base Paper * Complete Source Code * Complete Documentation * Complete Presentation Slides * Flow Diagram * Database File * Screenshots * Execution Procedure * Readme File * Addons * Video Tutorials * Supporting Softwares Specialization ======================= * 24/7 Support * Ticketing System * Voice Conference * Video On Demand * * Remote Connectivity * * Code Customization ** * Document Customization ** * Live Chat Support phishing website detection project, phishing website detection project using python, phishing website detection using machine learning project, detecting phishing websites using machine learning project source code, phishing website detection project report, phishing website detection project github, detecting phishing websites using data mining github, detecting e banking phishing websites using associative classification #phishingwebsitedetection

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