TY - JOUR
T1 - PRRQ
T2 - Privacy-Preserving Resilient RkNN Query Over Encrypted Outsourced Multiattribute Data
AU - Wang, Jing
AU - Bao, Haiyong
AU - Ruan, Na
AU - Kong, Qinglei
AU - Huang, Cheng
AU - Dai, Hong Ning
N1 - Publisher Copyright:
© 1968-2012 IEEE.
PY - 2025
Y1 - 2025
N2 - Traditional reverse k-nearest neighbor (RkNN) query schemes typically assume that users are available online in real-time for interactive key reception, overlooking scenarios where users might be offline. Moreover, existing privacy-preserving RkNN query schemes primarily focus on user features or spatial data, neglecting the significance of user reputation values. To address these limitations, we propose a privacy-preserving resilient RkNN query scheme over encrypted outsourced multi-attribute data (PRRQ). Specifically, to mitigate the challenges posed by resilient online presence (i.e., non-real-time online) of users for interactive key reception, we incorporate a non-interactive key exchange (NIKE) protocol and the Diffie-Hellman two-party key exchange algorithm to propose a multi-party NIKE algorithm (2K-NIKE), facilitating non-interactive key reception for multiple users. Considering the privacy leakage issues, PRRQ encodes original multi-attribute data (i.e., spatial, feature, and reputation values) alongside query requests based on formalized criteria. Additionally, we integrate the proposed 2K-NIKE and the improved symmetric homomorphic encryption (iSHE) algorithms to encrypt them. Furthermore, catering to the requirements of ciphertext-based RkNN queries, we propose a private RkNN query eligibility-checking (PREC) algorithm and a private reputation-verifying (PRRV) algorithm, which validate the compliance of encrypted outsourced multi-attribute data with query requests. Security analysis demonstrates that PRRQ achieves simulation-based security under an honest-but-curious model. Experimental results show that PRRQ offers superior computational efficiency compared to comparative schemes.
AB - Traditional reverse k-nearest neighbor (RkNN) query schemes typically assume that users are available online in real-time for interactive key reception, overlooking scenarios where users might be offline. Moreover, existing privacy-preserving RkNN query schemes primarily focus on user features or spatial data, neglecting the significance of user reputation values. To address these limitations, we propose a privacy-preserving resilient RkNN query scheme over encrypted outsourced multi-attribute data (PRRQ). Specifically, to mitigate the challenges posed by resilient online presence (i.e., non-real-time online) of users for interactive key reception, we incorporate a non-interactive key exchange (NIKE) protocol and the Diffie-Hellman two-party key exchange algorithm to propose a multi-party NIKE algorithm (2K-NIKE), facilitating non-interactive key reception for multiple users. Considering the privacy leakage issues, PRRQ encodes original multi-attribute data (i.e., spatial, feature, and reputation values) alongside query requests based on formalized criteria. Additionally, we integrate the proposed 2K-NIKE and the improved symmetric homomorphic encryption (iSHE) algorithms to encrypt them. Furthermore, catering to the requirements of ciphertext-based RkNN queries, we propose a private RkNN query eligibility-checking (PREC) algorithm and a private reputation-verifying (PRRV) algorithm, which validate the compliance of encrypted outsourced multi-attribute data with query requests. Security analysis demonstrates that PRRQ achieves simulation-based security under an honest-but-curious model. Experimental results show that PRRQ offers superior computational efficiency compared to comparative schemes.
KW - NIKE
KW - RkNN query
KW - iSHE
KW - privacy preservation
UR - https://www.scopus.com/pages/publications/105015159821
U2 - 10.1109/TC.2025.3603688
DO - 10.1109/TC.2025.3603688
M3 - 文章
AN - SCOPUS:105015159821
SN - 0018-9340
VL - 74
SP - 3652
EP - 3666
JO - IEEE Transactions on Computers
JF - IEEE Transactions on Computers
IS - 11
ER -