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An Entropy-Based Network Anomaly Detection Method

机译:基于熵的网络异常检测方法

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Data mining is an interdisciplinary subfield of computer science involving methods at the intersection of artificial intelligence, machine learning and statistics. One of the data mining tasks is anomaly detection which is the analysis of large quantities of data to identify items, events or observations which do not conform to an expected pattern. Anomaly detection is applicable in a variety of domains, e.g., fraud detection, fault detection, system health monitoring but this article focuses on application of anomaly detection in the field of network intrusion detection. The main goal of the article is to prove that an entropy-based approach is suitable to detect modern botnet-like malware based on anomalous patterns in network. This aim is achieved by realization of the following points: (i) preparation of a concept of original entropy-based network anomaly detection method, (ii) implementation of the method, (iii) preparation of original dataset, (iv) evaluation of the method.
机译:数据挖掘是计算机科学的一个跨学科子领域,涉及人工智能,机器学习和统计学交叉领域的方法。数据挖掘任务之一是异常检测,它是对大量数据的分析,以识别不符合预期模式的项目,事件或观察结果。异常检测适用于各种领域,例如欺诈检测,故障检测,系统运行状况监视,但是本文重点介绍异常检测在网络入侵检测领域中的应用。本文的主要目的是证明基于熵的方法适用于根据网络中的异常模式检测类似现代僵尸网络的恶意软件。通过实现以下几点来实现此目标:(i)准备基于原始熵的网络异常检测方法的概念,(ii)实现该方法,(iii)准备原始数据集,(iv)评估方法。

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