Overview of homomorphic encryption technology for data privacy

This study examines the overview of homomorphic encryption technology for data privacy. In the era of big data, the growing need to utilize vast amounts of information while ensuring privacy and security has become a significant challenge. Homomorphic encryption technology has gained attention as a...

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Published in:Review of Computer Engineering Research
Main Author: Chen Q.; Li H.; Ariffin S.; Abdullah N.A.S.
Format: Article
Language:English
Published: Conscientia Beam 2024
Online Access:https://www.scopus.com/inward/record.uri?eid=2-s2.0-85209139995&doi=10.18488%2f76.v11i3.3955&partnerID=40&md5=7de5b58bdc4f58dca7223b248c6dbef1
id 2-s2.0-85209139995
spelling 2-s2.0-85209139995
Chen Q.; Li H.; Ariffin S.; Abdullah N.A.S.
Overview of homomorphic encryption technology for data privacy
2024
Review of Computer Engineering Research
11
3
10.18488/76.v11i3.3955
https://www.scopus.com/inward/record.uri?eid=2-s2.0-85209139995&doi=10.18488%2f76.v11i3.3955&partnerID=40&md5=7de5b58bdc4f58dca7223b248c6dbef1
This study examines the overview of homomorphic encryption technology for data privacy. In the era of big data, the growing need to utilize vast amounts of information while ensuring privacy and security has become a significant challenge. Homomorphic encryption technology has gained attention as a solution for privacy-preserving data processing, allowing computations on encrypted data without exposing sensitive information. This study introduces the concept of data privacy preservation and explores the evaluation of homomorphic encrypted technology. The focus is on analyzing both partial and full homomorphic encryption methods, highlighting their respective characteristics, evaluation criteria, and the current state of research. Partial homomorphic encryption supports limited operations, while full homomorphic encryption enables unlimited computation on encrypted data, though both face challenges related to computational overhead and efficiency. Additionally, this paper addresses the ongoing issues and limitations associated with homomorphic encryption, such as its complexity, large encryption volumes, and difficulties in handling large-scale datasets. Despite these challenges, researchers continue to refine the technology and expand its applications in cloud computing, big data analytics, and privacy-preserving computing environments. This study also discussed potential future research avenues aimed at improving the scalability, efficiency, and security of homomorphic encryption to support broader, real-world applications. Ultimately, homomorphic encryption is positioned as a key enabler for secure data utilization in an increasingly privacy-conscious digital landscape. © 2024 Conscientia Beam. All Rights Reserved.
Conscientia Beam
24109142
English
Article
All Open Access
author Chen Q.; Li H.; Ariffin S.; Abdullah N.A.S.
spellingShingle Chen Q.; Li H.; Ariffin S.; Abdullah N.A.S.
Overview of homomorphic encryption technology for data privacy
author_facet Chen Q.; Li H.; Ariffin S.; Abdullah N.A.S.
author_sort Chen Q.; Li H.; Ariffin S.; Abdullah N.A.S.
title Overview of homomorphic encryption technology for data privacy
title_short Overview of homomorphic encryption technology for data privacy
title_full Overview of homomorphic encryption technology for data privacy
title_fullStr Overview of homomorphic encryption technology for data privacy
title_full_unstemmed Overview of homomorphic encryption technology for data privacy
title_sort Overview of homomorphic encryption technology for data privacy
publishDate 2024
container_title Review of Computer Engineering Research
container_volume 11
container_issue 3
doi_str_mv 10.18488/76.v11i3.3955
url https://www.scopus.com/inward/record.uri?eid=2-s2.0-85209139995&doi=10.18488%2f76.v11i3.3955&partnerID=40&md5=7de5b58bdc4f58dca7223b248c6dbef1
description This study examines the overview of homomorphic encryption technology for data privacy. In the era of big data, the growing need to utilize vast amounts of information while ensuring privacy and security has become a significant challenge. Homomorphic encryption technology has gained attention as a solution for privacy-preserving data processing, allowing computations on encrypted data without exposing sensitive information. This study introduces the concept of data privacy preservation and explores the evaluation of homomorphic encrypted technology. The focus is on analyzing both partial and full homomorphic encryption methods, highlighting their respective characteristics, evaluation criteria, and the current state of research. Partial homomorphic encryption supports limited operations, while full homomorphic encryption enables unlimited computation on encrypted data, though both face challenges related to computational overhead and efficiency. Additionally, this paper addresses the ongoing issues and limitations associated with homomorphic encryption, such as its complexity, large encryption volumes, and difficulties in handling large-scale datasets. Despite these challenges, researchers continue to refine the technology and expand its applications in cloud computing, big data analytics, and privacy-preserving computing environments. This study also discussed potential future research avenues aimed at improving the scalability, efficiency, and security of homomorphic encryption to support broader, real-world applications. Ultimately, homomorphic encryption is positioned as a key enabler for secure data utilization in an increasingly privacy-conscious digital landscape. © 2024 Conscientia Beam. All Rights Reserved.
publisher Conscientia Beam
issn 24109142
language English
format Article
accesstype All Open Access
record_format scopus
collection Scopus
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