Title
Transactional Data Anonymization for Privacy and Information Preservation via Disassociation and Local Suppression
Abstract
Ubiquitous devices in IoT-based environments create a large amount of transactional data on daily personal behaviors. Releasing these data across various platforms and applications for data mining can create tremendous opportunities for knowledge-based decision making. However, solid guarantees on the risk of re-identification are required to make these data broadly available. Disassociation is a popular method for transactional data anonymization against re-identification attacks in privacy-preserving data publishing. The anonymization algorithm of disassociation is performed in parallel, suitable for the asymmetric paralleled data process in IoT where the nodes have limited computation power and storage space. However, the anonymization algorithm of disassociation is based on the global recoding mode to achieve transactional data k(m)-anonymization, which leads to a loss of combinations of items in transactional datasets, thus decreasing the data quality of the published transactions. To address the issue, we propose a novel vertical partition strategy in this paper. By employing local suppression and global partition, we first eliminate the itemsets which violate k(m)-anonymity to construct the first k(m)-anonymous record chunk. Then, by the processes of itemset creating and reducing, we recombine the globally partitioned items from the first record chunk to construct remaining k(m)-anonymous record chunks. The experiments illustrate that our scheme can retain more association between items in the dataset, which improves the utility of published data.
Year
DOI
Venue
2022
10.3390/sym14030472
SYMMETRY-BASEL
Keywords
DocType
Volume
disassociation, k(m)-anonymity, privacy preservation, transactional data publishing
Journal
14
Issue
ISSN
Citations 
3
2073-8994
0
PageRank 
References 
Authors
0.34
0
3
Name
Order
Citations
PageRank
Xiangwen Liu100.34
Xia Feng213.05
Yuquan Zhu300.68