基于深度学习的高效SQL注入检测系统

J. R, Saravana Balaji B, Nishant Pandey, Pradyumn Beriwal, Abhinandan Amarajan
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引用次数: 11

摘要

SQL注入使得大多数基于不同类型数据库的应用程序在任何设备上都容易受到网络威胁。SQL注入被认为是基于数据库的web应用程序面临的最大威胁之一。SQL注入使数据库中存在的所有用户信息容易受到攻击,用户数据可能在黑市上出售或被滥用。以前实现的SQLI模型的缺点是它们不知道如何对新模式进行分类,它们只能检测以前经历过或训练过的模式,但是我们的模型将能够识别输入的数据是否为SQL注入或是否识别输入中的模式。我们的系统的优势在于,它将能够检测所有类型的注射技术。所有的特征提取和选择都将由模型自己完成。只是用户应该需要输入文本。它也是可伸缩的,可以扩展到各种各样的应用程序。在MLP模型的帮助下,交叉验证的准确率为98%,精密度为98%,召回率为97%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
An Efficient SQL Injection Detection System Using Deep Learning
SQL Injection makes most of the applications that are based on different types of databases be it used in any devices vulnerable to cyber threat. SQL Injection is said to be one of the top most threat that database-based applications on the web. SQL Injection makes all the user‘s information present in the database vulnerable and the user‘s data may be either sold in black market or may be misused. The disadvantages of previously implemented SQLI model is that they will not know how will they be able to categorize new patterns, they will only be able to detect the patterns which they have experienced before or trained on, But our model will be able to identify whether the data entered is SQL injected or not identifying patterns in the input. The advantages to our system will be that it will be able to detect all and every type of Injection techniques. All the feature extraction and selection will be done by the model itself. Just the user should need to enter the text. It is also scalable and can extend it to a wide variety of applications. With the help of MLP model, we have achieved a cross-validated accuracy of 98% with a precision of 98% and recall of 97%.
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