ComplexIoT:物联网网络基于行为的信任

Kyle Haefner, I. Ray
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引用次数: 7

摘要

这项工作采用了一种新颖的方法,通过利用物联网设备的单一用途性质和分析其网络流量的复杂性和方差来对设备的行为进行分类。我们为物联网设备开发了一种形式化的复杂性测量方法,并使用该测量方法精确地调整每个设备的异常检测算法。我们假设低复杂性的物联网设备对其行为模型具有高置信度,并且对其预测行为具有相应的更精确的决策边界。相反,复杂的通用设备具有较低的置信度和更广义的决策边界。我们表明,通过异常检测算法发现的异常值数量与我们的复杂性度量呈正相关。通过根据设备复杂性调整这个决策边界,我们能够为每个设备构建一个行为框架,以减少误报异常值。最后,我们提出了一种架构,该架构可以使用这种调整的行为模型对网络上的每个流进行排名,并计算进出设备的所有流量的信任分数排名,从而允许网络在每个流的基础上自主做出访问控制决策。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
ComplexIoT: Behavior-Based Trust For IoT Networks
This work takes a novel approach to classifying the behavior of devices by exploiting the single-purpose nature of IoT devices and analyzing the complexity and variance of their network traffic. We develop a formalized measurement of complexity for IoT devices, and use this measurement to precisely tune an anomaly detection algorithm for each device. We postulate that IoT devices with low complexity lead to a high confidence in their behavioral model and have a correspondingly more precise decision boundary on their predicted behavior. Conversely, complex general purpose devices have lower confidence and a more generalized decision boundary. We show that there is a positive correlation to our complexity measure and the number of outliers found by an anomaly detection algorithm. By tuning this decision boundary based on device complexity we are able to build a behavioral framework for each device that reduces false positive outliers. Finally, we propose an architecture that can use this tuned behavioral model to rank each flow on the network and calculate a trust score ranking of all traffic to and from a device which allows the network to autonomously make access control decisions on a per-flow basis.
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