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A Clustering based Approach for Contextual Anomaly Detection in Internet of Things

机译:物联网中基于聚类的上下文异常检测方法

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摘要

Internet of Things (IoT) is a network which connects different communication devices with the internet to attain quick, robust and realtime information transfer and communication, achieving intelligent management. IoT is still in its infancy so it faces numerous challenges varying from data management to security concerns. Sensors generate enormous quantities of data that need to be handled efficiently to have successful deployment of IoT applications. Concerning data management, a great challenge that faces the IoT environment is the detection of contextual anomalies. Contextual anomaly detection is a sophisticated task because the context has to be taken into consideration in the anomaly detection process rather than checking only the deviation of the data value as in point anomaly detection. As a result, in this paper, a novel clustering based algorithm is proposed to detect contextual anomalies in Internet of Things. Attributes were separated into two different categories, namely contextual attributes and behavioral attributes. K-Means clustering technique was applied on the contextual and behavioral attributes separately, then the intersection between the contextual and behavioral clusters was used to detect the contextual anomalies. Moreover, the algorithm was applied on a real room occupation dataset of size around 20,000 records and the experiments showed promising results.
机译:物联网(IoT)是将不同的通信设备与Internet连接起来的网络,以实现快速,健壮和实时的信息传输和通信,从而实现智能管理。物联网仍处于起步阶段,因此面临着从数据管理到安全问题的众多挑战。传感器生成大量数据,需要对其进行有效处理才能成功部署IoT应用程序。关于数据管理,物联网环境面临的一个巨大挑战是检测上下文异常。上下文异常检测是一项复杂的任务,因为在异常检测过程中必须考虑上下文,而不是像在点异常检测中那样仅检查数据值的偏差。因此,本文提出了一种新的基于聚类的算法来检测物联网中的上下文异常。属性分为两个不同的类别,即上下文属性和行为属性。将K-Means聚类技术分别应用于上下文和行为属性,然后使用上下文和行为聚类之间的交集检测上下文异常。此外,将该算法应用于大小约为20,000条记录的真实房间占用数据集,实验结果显示出令人满意的效果。

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