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XML-AD: Detecting anomalous patterns in XML documents

机译:XML-AD:检测XML文档中的异常模式

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摘要

Many information systems use XML documents to store data and to interact with other systems. Abnormal documents, which can be the result of either an on-going cyber attack or the actions of a benign user, can potentially harm the interacting systems and are therefore regarded as a threat. In this paper we address the problem of anomaly detection and localization in XML documents using machine learning techniques. We present XML-AD - a new XML anomaly detection framework. Within this framework, an automatic method for extraction of feature from XML documents as well as a practical method for transforming XML features into vectors of fixed dimensionality was developed. With these two methods in place, the XML-AD framework makes it possible to utilize general learning algorithms for anomaly detection. The core of the framework consists of a novel multi-univariate anomaly detection algorithm, ADIFA. The framework was evaluated using four XML documents datasets which were obtained from real information systems. It achieved over 89% true positive detection rate with less than 0.2% of false positives. (C) 2015 Elsevier Inc. All rights reserved.
机译:许多信息系统使用XML文档来存储数据并与其他系统进行交互。异常文件可能是持续的网络攻击或良性用户的行为所致,可能会损害交互系统,因此被视为威胁。在本文中,我们使用机器学习技术解决了XML文档中异常检测和本地化的问题。我们介绍XML-AD-一种新的XML异常检测框架。在此框架内,开发了一种从XML文档中提取特征的自动方法,以及一种将XML特征转换为固定维向量的实用方法。有了这两种方法,XML-AD框架就可以利用通用学习算法进行异常检测。该框架的核心由新颖的多单变量异常检测算法ADIFA组成。使用从真实信息系统获得的四个XML文档数据集对框架进行了评估。它实现了超过89%的真阳性检出率,不到0.2%的假阳性。 (C)2015 Elsevier Inc.保留所有权利。

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