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RLINK: Deep reinforcement learning for user identity linkage

Xiaoxue Li, Yanan Cao, Qian Li, Yanmin Shang, Yangxi Li, Yanbing Liu, Guandong Xu

2020World Wide Web27 citationsDOIOpen Access PDF

Abstract

Abstract User identity linkage is a task of recognizing the identities of the same user across different social networks (SN). Previous works tackle this problem via estimating the pairwise similarity between identities from different SN, predicting the label of identity pairs or selecting the most relevant identity pair based on the similarity scores. However, most of these methods fail to utilize the results of previously matched identities, which could contribute to the subsequent linkages in following matching steps. To address this problem, we transform user identity linkage into a sequence decision problem and propose a reinforcement learning model to optimize the linkage strategy from the global perspective. Our method makes full use of both the social network structure and the history matched identities, meanwhile explores the long-term influence of processing matching on subsequent decisions. We conduct extensive experiments on real-world datasets, the results show that our method outperforms the state-of-the-art methods.

Topics & Concepts

Computer sciencePairwise comparisonLinkage (software)Reinforcement learningIdentity (music)Similarity (geometry)Matching (statistics)Task (project management)Artificial intelligencePerspective (graphical)Machine learningImage (mathematics)MathematicsEconomicsStatisticsPhysicsBiochemistryAcousticsGeneChemistryManagementAdvanced Graph Neural NetworksTopic ModelingComplex Network Analysis Techniques