A Systematic Review on Privacy-Aware IoT Personal Data Stores

Author:

Pinto George P.12ORCID,Donta Praveen Kumar3ORCID,Dustdar Schahram3ORCID,Prazeres Cássio13ORCID

Affiliation:

1. Institute of Computing, Federal University of Bahia, Canela 40170-110, Brazil

2. Federal Institute of Bahia, Santo Antônio de Jesus 44571-020, Brazil

3. Distributed Systems Group, TU Wien, 1040 Vienna, Austria

Abstract

Data from the Internet of Things (IoT) enables the design of new business models and services that improve user experience and satisfaction. These data serve as important information sources for many domains, including disaster management, biosurveillance, smart cities, and smart health, among others. However, this scenario involves the collection of personal data, raising new challenges related to data privacy protection. Therefore, we aim to provide state-of-the-art information regarding privacy issues in the context of IoT, with a particular focus on findings that utilize the Personal Data Store (PDS) as a viable solution for these concerns. To achieve this, we conduct a systematic mapping review to identify, evaluate, and interpret the relevant literature on privacy issues and PDS-based solutions in the IoT context. Our analysis is guided by three well-defined research questions, and we systematically selected 49 studies published until 2023 from an initial pool of 176 papers. We analyze and discuss the most common privacy issues highlighted by the authors and position the role of PDS technologies as a solution to privacy issues in the IoT context. As a result, our findings reveal that only a small number of works (approximately 20%) were dedicated to presenting solutions for privacy issues. Most works (almost 82%) were published between 2018 and 2023, demonstrating an increased interest in the theme in recent years. Additionally, only two works used PDS-based solutions to deal with privacy issues in the IoT context.

Funder

TEADAL, EU Horizon project

Publisher

MDPI AG

Reference85 articles.

1. The business of personal data: Google, Facebook, and privacy issues in the EU and the USA;Esteve;Int. Data Priv. Law,2017

2. Data Transparency: Concerns and Prospects [Point of View];Laoutaris;Proc. IEEE,2018

3. A decentralized personal data store based on ethereum: Towards GDPR compliance;Alessi;J. Commun. Softw. Syst.,2019

4. Grothaus, M. (2024, February 18). The Biggest Data Scandals and Breaches of 2018. Available online: https://www.businessinsider.com/data-hacks-breaches-biggest-of-2018-2018-12.

5. Westin, A. (1968). Privacy and Freedom, Athenaeum.

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