一个用于预测sql和XSS攻击的系统

Mehmet Serhan Erçi̇n, E. Yolacan
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引用次数: 0

摘要

在本研究中,旨在降低虚警水平,提高正确的检出率,以减少这种不确定性。在研究范围内,使用了13157个SQLi和XSS类型的恶意请求和10000个正常HTTP请求。所有的HTTP请求都是从同一个web服务器接收到的,并且观察到正常请求和恶意请求彼此接近。本研究提出了一种新的方法,即在数据预处理阶段将数据数字化并以文字表达。采用LSTM、MLP、CNN、GNB、SVM、KNN、DT、RF算法进行分类,并以准确率、精密度、召回率和f1评分指标对分类结果进行评价。作为本研究的贡献,我们可以清楚地表达以下推论。每个有效载荷虽然看起来不同但影响相同也许在预处理阶段后我们可以清楚地看到。预处理后计算欧几里得距离,得到表达式之间的相对性。当我们将这种相关性作为机器学习和/或深度学习模型的入口数据时,也许我们可以理解良性请求或攻击向量的差异。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A system for redicting SQLi and XSS Attacks
In this study, it is aimed to reduce False-Alarm levels and increase the correct detection rate in order to reduce this uncertainty. Within the scope of the study, 13157 SQLi and XSS type malicious and 10000 normal HTTP Requests were used. All HTTP requests were received from the same web server, and it was observed that normal requests and malicious requests were close to each other. In this study, a novel approach is presented via both digitization and expressing the data with words in the data preprocessing stages. LSTM, MLP, CNN, GNB, SVM, KNN, DT, RF algorithms were used for classification and the results were evaluated with accuracy, precision, recall and F1-score metrics. As a contribution of this study, we can clearly express the following inferences. Each payload even if it seems different which has the same impact maybe that we can clearly view after the preprocessing phase. After preprocessing we are calculating euclidean distances which brings and gives us the relativity between expressions. When we put this relativity as an entry data to machine learning and/or deep learning models, perhaps we can understand the benign request or the attack vector difference.
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