Machine learning‐based clustering protocols for Internet of Things networks: An overview

Author:

Merah Malha1ORCID,Aliouat Zibouda1,Harbi Yasmine1,Batta Mohamed Sofiane12ORCID

Affiliation:

1. LRSD Laboratory, Department of Computer Science Ferhat Abbas University Setif Algeria

2. FEMTO‐ST Institute/DISC University of Bourgogne Franche‐Comte Montbeliard France

Abstract

SummaryThe Internet of Things (IoT) continues to expand the current Internet, opening the door to a wide range of novel applications. The increasing volume of the IoT requires effective strategies to overcome its challenges. Machine Learning (ML) has led to a growing technology that enables computers to solve problems without the need for knowledge of their intricate details. Over the past years, various ML techniques have been used to efficiently manage IoT networks. Clustering is a technique that has proven its performance in the networking domain. Many works in the literature have studied ML‐based clustering methods for IoT networks, including their main properties, characteristics, underlying technologies, and open issues. In this paper, we focus on topology‐centered ML‐based clustering protocols for IoT networks. Specifically, we investigate the potential benefits of adopting the clustering approach to address several IoT challenges. Moreover, we provide a comprehensive taxonomy of ML‐based clustering algorithms for IoT networks. Finally, we statistically analyze the incorporation of ML techniques for clustering in various IoT systems and highlight the related open issues.

Publisher

Wiley

Subject

Electrical and Electronic Engineering,Computer Networks and Communications

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