2022
DOI: 10.1007/s40747-022-00917-0
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An efficient privacy-preserving point-of-interest recommendation model based on local differential privacy

Abstract: With the rapid development of point-of-interest (POI) recommendation services, how to utilize the multiple types of users’ information safely and effectively for a better recommendation is challenging. To solve the problems of imperfect privacy-preserving mechanism and insufficient response-ability to complex contexts, this paper proposes a hybrid POI recommendation model based on local differential privacy (LDP). Firstly, we introduce randomized response techniques k-RR and RAPPOR to disturb users’ ratings an… Show more

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Cited by 5 publications
(1 citation statement)
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References 45 publications
(54 reference statements)
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“…In addition, a novel recommendation approach is introduced Qin, J., Zhang [46] combining split-federated learning with edge-cloud infrastructure to enhance efficiency and privacy while scaling to large datasets for item recommendations. Xu, C., Mei [47] the author presents a novel recommendation approach emphasizing user privacy through the application of local differential privacy, aiming to provide accurate point-of-interest recommendations while preserving the confidentiality of user data. Mantey, E.A.…”
Section: Methodsmentioning
confidence: 99%
“…In addition, a novel recommendation approach is introduced Qin, J., Zhang [46] combining split-federated learning with edge-cloud infrastructure to enhance efficiency and privacy while scaling to large datasets for item recommendations. Xu, C., Mei [47] the author presents a novel recommendation approach emphasizing user privacy through the application of local differential privacy, aiming to provide accurate point-of-interest recommendations while preserving the confidentiality of user data. Mantey, E.A.…”
Section: Methodsmentioning
confidence: 99%