Abstract
Web applications support many of our daily activities, but they often have security issues, and their accessibility makes them easy to use. This paper presents an analysis for finding vulnerabilities that directly address weak or absent of input validation. We present the techniques for finding security vulnerabilities in Web applications. We implement our proposed system with a machine learning technique (ML technique) to measure the accuracy and provide an extensive evaluation that finds all vulnerabilities in web applications. SQL injection, Cross-Site Scripting (XSS), HTTP and command inj1ection vulnerabilities are addressed in the proposed system and also Naive Bayes ML technique is used to calculate the accurateness. The experimental result shows the technique is more efficient and accurate.
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More From: International Journal of Innovative Technology and Exploring Engineering
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