Using Logistic Trust for Event Learning and Misbehaviour Detection

Saneeha Ahmed, K. Tepe
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引用次数: 6

Abstract

The advancement in communication technologies has enabled ad hoc networks to collect large volumes of information. This information is vulnerable to various types of attacks amongst which false information dissemination and on-off attacks offer biggest threats to the networks. As the data in ad hoc networks depends on the events, it is necessary for any detection mechanism to first determine the true events. Then the information about these events can be used to judge the behavior of the senders. Therefore, in this work, the correct event is first learned using information from different sources including the observations of the receiver itself. This information is later used to learn the behavior of the senders. The learned behavior combined with the opinions of the neighbors about the sender allows the detection of malicious and honest nodes. In this work, a logistic trust model is used to combine the observed behavior and opinions. It is observed that logistic trust results in a high accuracy of over 99% and a low error of less than 1% even when the events are changing rapidly. It is also shown that the scheme can detect malicious majority and identify true events with high probability.
基于逻辑信任的事件学习与错误行为检测
通信技术的进步使特设网络能够收集大量信息。这些信息容易受到各种类型的攻击,其中虚假信息传播和开关攻击是对网络的最大威胁。由于自组织网络中的数据依赖于事件,因此任何检测机制都必须首先确定真实的事件。然后,这些事件的信息可以用来判断发送者的行为。因此,在这项工作中,正确的事件首先是使用来自不同来源的信息来学习的,包括接收者自己的观察。这些信息随后用于了解发送者的行为。学习行为与邻居对发送者的看法相结合,允许检测恶意和诚实节点。在这项工作中,使用逻辑信任模型将观察到的行为和意见结合起来。观察到,即使在事件快速变化的情况下,逻辑信任也能产生超过99%的高准确率和小于1%的低误差。该方案能够检测出恶意多数,并以高概率识别出真实事件。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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