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Microservice‐driven privacy‐aware cross‐platform social relationship prediction based on sequential information
16
Citations
55
References
2023
Year
EngineeringMachine LearningPrivacy Risk AssessmentRelationship PredictionCommunicationLarge-scale DatasetsSensitive Information LeakageSocial MediaInformation RetrievalData ScienceData MiningKnowledge Graph EmbeddingsData IntegrationData ManagementSocial Network AnalysisPrivacy ManagementCommon BucketPredictive AnalyticsKnowledge DiscoveryData PrivacyComputer ScienceSocial Data ManagementSocial ComputingArtsSequential InformationBig Data
Abstract Currently, the accurate prediction of social relationships can effectively reduce the decision‐making burden of users in various service platforms. However, in the big data environment, the users' data information used for the relationship prediction is highly fragmented distribution, so it is a non‐trivial challenge to integrate the users' sequence data information from different platforms while preventing sensitive information leakage. To this end, based on the microservice environment, we devise a cross‐ p latform s ocial r elationship p rediction approach (CPSRP) to address the above problems. Briefly, the improved Simhash method aggregates similar users into the common bucket. Then the embedding technique converts the users' sparse data information into the low‐dimensional dense continuous feature vectors; the r edefined G ated R ecurrent U nit (r‐GRU) network and the M ulti l ayer P erceptron (MLP) network are employed to extract the overall temporal sequence features of users. The relationship prediction is finally executed according to the users' sequential features. Extensive experiments are conducted on Epinions, and the experimental results further prove the benefits of our proposal in terms of relationship prediction while protecting users' sensitive information.
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