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A Machine Learning Approach Using Classifier Cascades for Optimal Routing in Opportunistic Internet of Things Networks

机译:一种基于分类器级联的机器学习方法,用于机会物联网网络中的最佳路由

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Routing in Opportunistic Internet of Things Network (OppIoT) is an involved problem, because the network is intermittently connected and source to destination end-to-end paths are non-existent. Moreover, Machine Learning (ML) has recently achieved great success in multiple domains and is now being applied to automate routing in Opportunistic Networks (OppNets) which are similar in characteristics to OppIoT, through protocols such as MLProph and KNNR. In this paper, we utilize cascade learning, a form of ensemble based ML, for improved routing in OppIoT. Through simulations we show that our proposed protocol called Cascaded Machine Learning based routing protocol (CAML), outperforms existing ML based protocols (MLProph and KNNR), and traditional well-performing protocols (HBPR and PRoPHET), on a wide range of performance metrics including message delivery probability, average hop count, packets dropped and network overhead ratio.
机译:机会物联网(OppIoT)中的路由是一个涉及的问题,因为网络是间歇性连接的,并且源到目标的端到端路径不存在。此外,机器学习(ML)最近在多个领域都取得了巨大的成功,并且现已通过MLProph和KNNR等协议被应用到与OppIoT类似的机会网络(OppNets)中自动进行路由。在本文中,我们利用级联学习(一种基于集成的ML形式)来改进OppIoT中的路由。通过仿真显示,我们提出的协议称为基于级联机器学习的路由协议(CAML),在许多性能指标上均优于现有的基于ML的协议(MLProph和KNNR)以及传统的性能良好的协议(HBPR和PRoPHET)消息传递概率,平均跳数,丢包和网络开销率。

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