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Metaheuristic algorithm for anomaly detection in Internet of Things leveraging on a neural-driven multiagent system

机译:在内部驱动的多透系统中利用内网的异常检测的成群质算法

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Detecting unusual data, activities and user behaviors is an extremely important task to acquire relevant security information that allow identifying faults, intrusions and system malfunctions. In Internet of Things (IoT), conventional anomaly detection approaches are not particularly appropriated due to the limited computing resources and the high dynamism of the entities involved. This paper proposes an activity footprints based method to detect anomalies in IoT by exploiting a multiagent algorithm. Devices and services are represented using dense vectors obtained through IoT2Vec, a word embedding technique able to capture the semantic context and represent them with high-dimensional vectors. The method allows mapping sequences of specific device activities - digital footprints - with real-valued vectors. The vectors are assigned to mobile agents that act following each one a modified bio-inspired model. This model enables an intelligent global behavior to emerge on the basis of simple local movement rules observed by all agents onto a virtual 2D space. A tailored similarity rule, based on the Pearson's correlation, drives each agent for a selective application of the movement rules, so enabling an automatic closer positioning of similar agents. The intelligent positioning (clustering), driven by the assigned vectors, allows identifying isolated agents, representing devices with unusual activities to be monitored, since they can be associated to potential intruders or malicious users. Experimental results confirm the validity of the metaheuristic algorithm. (C) 2021 Elsevier B.V. All rights reserved.
机译:检测不寻常的数据,活动和用户行为是获取允许识别故障,入侵和系统故障的相关安全信息的非常重要的任务。在物联网(物联网)中,由于有限的计算资源和所涉及的实体的高活度,传统的异常检测方法没有特别拨出。本文提出了一种基于活动的方法,通过利用多算法来检测IOT中的异常。使用通过IOT2VEC获得的密集向量来表示设备和服务,该嵌入技术能够捕获语义上下文,并以高维向量代表它们。该方法允许映射特定设备活动的序列 - 数字脚印 - 具有实值矢量。向量被分配给移动代理,其行动每个修改的生物启发模型。该模型使智能全局行为能够基于所有代理观察到虚拟2D空间的简单本地移动规则。根据Pearson的相关性,为每个代理提供定制的相似性规则,以选择性地应用运动规则,因此可以自动更接近类似代理的定位。由分配的向量驱动的智能定位(聚类)允许识别隔离代理,表示具有要监视的不寻常活动的设备,因为它们可以与潜在的入侵者或恶意用户相关联。实验结果证实了成群质算法的有效性。 (c)2021 elestvier b.v.保留所有权利。

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