Author:
Mondal Biswajit,Banerjee Abhijit,Gupta Subir
Abstract
Various platforms and web apps to deliver material via the Internet are becoming more widespread. Web-based technologies accept and store sensitive information from users. Because of their Internet connectivity, these systems and the databases they link to are vulnerable to various information security vulnerabilities. The most dangerous threats are denial of service (DoS) and SQL injection assaults. SQL Injection attacks are at the top of the list for web-based systems. In this type of attack, the perpetrator will take sensitive and classified information that might hurt a firm or enterprise. Depending on the conditions, the corporation may incur financial losses, have private information disclosed, and have its stock market value drop. This work uses machine learning-based classifiers such as MLP, Support Vector Machine, Logistic Regression, Naive Bayes, and Decision Tree to identify and detect SQL Injection attacks. For the SQLI dataset learning strategies, we examined all five algorithms using the Confusion Matrix, F1 Score, and Log Loss. We discuss the benefits and drawbacks of the proposed AI-based SQLI techniques. Finally, we talk about making SQLI reach its full potential through more research in the coming years.
Publisher
Universidad Tecnica de Manabi
Subject
Education,General Nursing
Cited by
5 articles.
订阅此论文施引文献
订阅此论文施引文献,注册后可以免费订阅5篇论文的施引文献,订阅后可以查看论文全部施引文献
1. A Study on SQL Injection Detection: AI-based Perspective;2023 International Conference on Energy, Materials and Communication Engineering (ICEMCE);2023-12-14
2. Taxonomy of SQL Injection: ML Trends & Open Challenges;2023 IEEE 8th International Conference On Software Engineering and Computer Systems (ICSECS);2023-08-25
3. Machine Learning in ASD;Agile Software Development;2023-02-08
4. XSS Filter detection using Trust Region Policy Optimization;2023 1st International Conference on Advanced Innovations in Smart Cities (ICAISC);2023-01-23
5. Prediction of Indian government stakeholder oil stock prices using hyper parameterized LSTM models;2022 International Conference on Intelligent Controller and Computing for Smart Power (ICICCSP);2022-07-21