光学和监督学习方法在数据库入侵检测中的应用

Sharmila Subudhi, T. Behera, S. Panigrahi
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引用次数: 1

摘要

由于各种网络应用程序和信息系统的升级,数据库安全已成为当今互联网世界的主要关注点。确保后端数据库的安全性对于维护存储的敏感信息的机密性和完整性至关重要。本文提出了一种基于密度的聚类技术,即OPTICS,用于构造用户的法向轮廓。每个传入事务要么位于一个集群内,要么根据其局部离群因子值被发现偏离集群。通过单独使用各种监督机器学习技术(Naïve贝叶斯、决策树、规则归纳法、k近邻和径向基函数网络)进一步验证作为异常值观察到的交易。利用随机模型进行了大量的实验和比较分析,证明了该系统的有效性。
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Use of OPTICS and Supervised Learning Methods for Database Intrusion Detection
Database security has become a prime concern in today's internet world due to the escalation of various web applications and information systems. Ensuring the security of the back-end databases is highly essential for maintaining the confidentiality and integrity of the stored sensitive information. In this paper, a Density-based clustering technique, namely, OPTICS, has been applied for constructing the normal profile of users. Each incoming transaction either lies within a cluster or is found to deviate from the clusters based on its Local Outlier Factor value. The transactions observed as outliers are further verified by employing various supervised machine learning techniques individually – Naïve Bayes, Decision Tree, Rule Induction, k-Nearest Neighbor and Radial Basis Function Network. The effectiveness of our system is demonstrated by carrying out extensive experimentations and comparative analysis using stochastic models.
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