Beyond result verification: Efficient privacy-preserving spatial keyword query with suppressed leakage
Boolean range query (BRQ) is a typical type of spatial keyword query that is widely used in geographic information systems, location-based services and other applications. It retrieves the objects inside the query range and containing all query keywords. Many privacy-preserving BRQ schemes have been...
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sg-smu-ink.sis_research-96602024-02-22T03:00:04Z Beyond result verification: Efficient privacy-preserving spatial keyword query with suppressed leakage TONG, Qiuyun LI, Xinghua MIAO, Yinbin WANG, Yunwei LIU, Ximeng DENG, Robert H. Boolean range query (BRQ) is a typical type of spatial keyword query that is widely used in geographic information systems, location-based services and other applications. It retrieves the objects inside the query range and containing all query keywords. Many privacy-preserving BRQ schemes have been proposed to support BRQ over encrypted data. However, most of them fail to achieve efficient retrieval and lightweight result verification while suppressing access and search pattern leakage. Thus, in this paper, we propose an efficient verifiable privacy-preserving Boolean range query with suppressed leakage. Firstly, we convert BRQ into multi-keyword query by using Gray code and Bloom filter. Then, we achieve efficient oblivious multi-keyword query by combining distributed point function and PRP-based Cuckoo hashing, which protects the access and search patterns. Moreover, we support lightweight and oblivious result verification based on oblivious query, aggregate MAC, keyed-hashing MAC and XOR-homomorphic pseudorandom function. It enables query users to verify the result integrity with a proof whose size is independent of the size of the outsourced dataset. Finally, formal security analysis and extensive experiments demonstrate that our proposed scheme is adaptively secure and efficient for practical applications, respectively. 2024-01-01T08:00:00Z text https://ink.library.smu.edu.sg/sis_research/8657 info:doi/10.1109/TIFS.2024.3354414 Research Collection School Of Computing and Information Systems eng Institutional Knowledge at Singapore Management University access pattern Privacy-preserving Boolean range query result verification search pattern Information Security |
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access pattern Privacy-preserving Boolean range query result verification search pattern Information Security TONG, Qiuyun LI, Xinghua MIAO, Yinbin WANG, Yunwei LIU, Ximeng DENG, Robert H. Beyond result verification: Efficient privacy-preserving spatial keyword query with suppressed leakage |
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Boolean range query (BRQ) is a typical type of spatial keyword query that is widely used in geographic information systems, location-based services and other applications. It retrieves the objects inside the query range and containing all query keywords. Many privacy-preserving BRQ schemes have been proposed to support BRQ over encrypted data. However, most of them fail to achieve efficient retrieval and lightweight result verification while suppressing access and search pattern leakage. Thus, in this paper, we propose an efficient verifiable privacy-preserving Boolean range query with suppressed leakage. Firstly, we convert BRQ into multi-keyword query by using Gray code and Bloom filter. Then, we achieve efficient oblivious multi-keyword query by combining distributed point function and PRP-based Cuckoo hashing, which protects the access and search patterns. Moreover, we support lightweight and oblivious result verification based on oblivious query, aggregate MAC, keyed-hashing MAC and XOR-homomorphic pseudorandom function. It enables query users to verify the result integrity with a proof whose size is independent of the size of the outsourced dataset. Finally, formal security analysis and extensive experiments demonstrate that our proposed scheme is adaptively secure and efficient for practical applications, respectively. |
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TONG, Qiuyun LI, Xinghua MIAO, Yinbin WANG, Yunwei LIU, Ximeng DENG, Robert H. |
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TONG, Qiuyun LI, Xinghua MIAO, Yinbin WANG, Yunwei LIU, Ximeng DENG, Robert H. |
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TONG, Qiuyun |
title |
Beyond result verification: Efficient privacy-preserving spatial keyword query with suppressed leakage |
title_short |
Beyond result verification: Efficient privacy-preserving spatial keyword query with suppressed leakage |
title_full |
Beyond result verification: Efficient privacy-preserving spatial keyword query with suppressed leakage |
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Beyond result verification: Efficient privacy-preserving spatial keyword query with suppressed leakage |
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Beyond result verification: Efficient privacy-preserving spatial keyword query with suppressed leakage |
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beyond result verification: efficient privacy-preserving spatial keyword query with suppressed leakage |
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Institutional Knowledge at Singapore Management University |
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2024 |
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https://ink.library.smu.edu.sg/sis_research/8657 |
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