Visible to the public Enhance Privacy in Big Data and Cloud via Diff-Anonym Algorithm

TitleEnhance Privacy in Big Data and Cloud via Diff-Anonym Algorithm
Publication TypeConference Paper
Year of Publication2017
AuthorsHassoon, I. A., Tapus, N., Jasim, A. C.
Conference Name2017 16th RoEduNet Conference: Networking in Education and Research (RoEduNet)
ISBN Number978-1-5386-3411-0
Keywordsaccurate data, Big Data, big data privacy, cloud, cloud computing, Computers, data anonymity, Data models, data privacy, diff-anonym algorithm, Differential privacy, human factors, Influenza, k-anonymity, Metrics, policy, privacy, privacy assurance, privacy enhancement, privacy guarantee rate, privacy infringement, privacy models, private data, pubcrawl, Resiliency, Scalability
Abstract

The main issue with big data in cloud is the processed or used always need to be by third party. It is very important for the owners of data or clients to trust and to have the guarantee of privacy for the information stored in cloud or analyzed as big data. The privacy models studied in previous research showed that privacy infringement for big data happened because of limitation, privacy guarantee rate or dissemination of accurate data which is obtainable in the data set. In addition, there are various privacy models. In order to determine the best and the most appropriate model to be applied in the future, which also guarantees big data privacy, it is necessary to invest in research and study. In the next part, we surfed some of the privacy models in order to determine the advantages and disadvantages of each model in privacy assurance for big data in cloud. The present study also proposes combined Diff-Anonym algorithm (K-anonymity and differential models) to provide data anonymity with guarantee to keep balance between ambiguity of private data and clarity of general data.

URLhttp://ieeexplore.ieee.org/document/8123730/
DOI10.1109/ROEDUNET.2017.8123730
Citation Keyhassoon_enhance_2017