Publication | Closed Access
A Locality Sensitive Hashing Based Approach for Federated Recommender System
11
Citations
19
References
2020
Year
Unknown Venue
EngineeringInformation SecurityInformation RetrievalData ScienceData MiningAccurate Recommendation ItemsPrivacy SystemPrivacy-preserving CommunicationBig DataData ManagementPrivacy Enhancing TechnologyPrivacy ServiceKnowledge DiscoveryData PrivacyPrivate Information RetrievalComputer ScienceCold-start ProblemPrivacyData SecurityCryptographyInformation Filtering SystemPrivacy PreservationGroup RecommendersCloud ComputingSimilarity SearchCollaborative FilteringLocality Sensitive Hashing
The recommender system is an important application in big data analytics because accurate recommendation items or high-valued suggestions can bring high profit to both commercial companies and customers. To make precise recommendations, a recommender system often needs large and fine-grained data for training. In the current big data era, data often exist in the form of isolated islands, and it is difficult to integrate the data scattered due to privacy security concerns. Moreover, privacy laws and regulations make it harder to share data. Therefore, designing a privacy-preserving recommender system is of paramount importance. Existing privacy-preserving recommender system models mainly adapt cryptography approaches to achieve privacy preservation. However, cryptography approaches have heavy overhead when performing encryption and decryption operations and they lack a good level of flexibility. In this paper, we propose a Locality Sensitive Hashing (LSH) based approach for federated recommender system. Our proposed efficient and scalable federated recommender system can make full use of multiple source data from different data owners while guaranteeing preservation of privacy of contributing parties. Extensive experiments on real-world benchmark datasets show that our approach can achieve both high time efficiency and accuracy under small privacy budgets.
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