A Novel Approach for Classification in Resource-Constrained Environments

IF 3.5 Q2 COMPUTER SCIENCE, INFORMATION SYSTEMS ACM Transactions on Internet of Things Pub Date : 2022-07-19 DOI:10.1145/3549552
Arun C. S. Kumar, Zhijie Wang, Abhishek Srivastava
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Abstract

Internet of Things’ (IoT) deployments are increasingly dependent upon learning algorithms to analyse collected data, draw conclusions, and take decisions. The norm is to deploy such learning algorithms on the cloud and have IoT nodes interact with the cloud. While this is effective, it is rather wasteful in terms of energy expended and temporal latency. In this article, the endeavour is to develop a technique that facilitates classification, an important learning algorithm, within the extremely resource constrained environments of IoT nodes. The approach comprises selecting a small number of representative data points, called prototypes, from a large dataset and deploying these prototypes over IoT nodes. The prototypes are selected in a manner that they appropriately represent the complete dataset and are able to correctly classify new, incoming data. The novelty lies in the manner of prototype selection for a cluster that not only considers the location of datapoints of its own cluster but also that of datapoints in neighboring clusters. The efficacy of the approach is validated using standard datasets and compared with state-of-the-art classification techniques used in constrained environments. A real world deployment of the technique is done over an Arduino Uno-based IoT node and shown to be effective.
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资源约束环境下一种新的分类方法
物联网(IoT)的部署越来越依赖于学习算法来分析收集的数据、得出结论和做出决策。规范是在云中部署这样的学习算法,并让物联网节点与云交互。虽然这是有效的,但就能量消耗和时间延迟而言,它相当浪费。在本文中,努力开发一种技术,促进分类,一个重要的学习算法,在物联网节点的极度资源受限的环境。该方法包括从大型数据集中选择少量具有代表性的数据点(称为原型),并将这些原型部署在物联网节点上。选择原型的方式是,它们适当地表示完整的数据集,并能够正确地分类新的传入数据。该方法的新颖之处在于,在选取原型时,既考虑了本簇数据点的位置,又考虑了邻近簇中数据点的位置。使用标准数据集验证了该方法的有效性,并将其与约束环境中使用的最新分类技术进行了比较。该技术的实际部署是在基于Arduino的IoT节点上完成的,并证明是有效的。
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CiteScore
5.20
自引率
3.70%
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0
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