Please use this identifier to cite or link to this item: http://hdl.handle.net/10397/118738
Title: Secure bi-attribute index : batch membership tests over the non-sensitive attribute
Authors: Fu, Y 
Ye, Q 
Du, R 
Hu, H 
Issue Date: May-2025
Source: Computers and security, May 2025, v. 152, 104369
Abstract: Secure index techniques enable keyword searches on encrypted univariate data, but they struggle with bi-attribute data common in AI and data mining applications. Traditional approaches suffer from inefficiencies during prefix queries due to duplicate trapdoor generations. Although plaintext processing of one non-sensitive attribute can boost performance, it may also introduce privacy risks from inter-attribute correlation and potential inference attacks. This paper presents a secure bi-attribute indexing solution, illustrated with a case study on searchable encryption for time-series data. We introduce two variants of matrix Bloom filters tailored for different workloads and implement a concept of bounded privacy loss via noise infusion from the randomized response technique. The outcome adheres to locally differential privacy principles, offering a provable privacy guarantee for sensitive attribute items.
Keywords: Bloom Filter
Hashing
Indexing
Query processing
Security
Publisher: Elsevier Advanced Technology
Journal: Computers and security 
ISSN: 0167-4048
EISSN: 1872-6208
DOI: 10.1016/j.cose.2025.104369
Appears in Collections:Journal/Magazine Article

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Embargo End Date 2027-05-31
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