Title: A review on privacy protection in the internet of things using machine learning-based solutions

Authors: Madhuri Pagale; Richa Purohit

Addresses: D.Y. Patil International University, Pimpri-Chinchwad, India ' D.Y. Patil International University, Pimpri-Chinchwad, India

Abstract: The internet of things (IoT) connects everyone in the world by offering a variety of applications and improving quality. In this technology, data protection is important. In recent years, many studies have been carried out on scalability, interoperability and resource constraints, such as the computational and energy strategies that machine learning (ML) uses to solve many data protection problems. This paper reviews these studies and aims to explore the possibilities and challenges of using data in ML-based solutions for IoT privacy. First, we explore and introduce various data sources into the IoT, and then classify them. We are also reviewing it and developing solutions developed based on existing ML and IoT to protect privacy. Finally, we'll look at how much specific data is used for privacy through ML-based solutions, and look at how these data sources can be used in the IoT ecosystem.

Keywords: internet of things; IoT; survey; privacy protection; security; ML; attacks; supervised learning; unsupervised learning; ML and blockchain; privacy preservation; sensors; data security.

DOI: 10.1504/IJIPSI.2021.119169

International Journal of Information Privacy, Security and Integrity, 2021 Vol.5 No.1, pp.69 - 91

Received: 30 Jun 2021
Accepted: 28 Jul 2021

Published online: 26 Nov 2021 *

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