Publication | Closed Access
Trust Relationship Prediction in Alibaba E-Commerce Platform
39
Citations
34
References
2019
Year
Labeled Trust RelationshipsCustomer SatisfactionEngineeringBusiness IntelligenceTrust Management ArchitectureNetwork AnalysisBusiness AnalyticsLink PredictionGraph ProcessingData ScienceData MiningTrust RelationshipsManagementTrust Relationship PredictionSocial Network AnalysisKnowledge DiscoveryTrustComputer ScienceInformation ManagementMarketingTrust MetricNetwork ScienceGraph TheoryInteractive MarketingTransaction Graph AnalysisBusinessTrust ManagementGraph AnalysisAlibaba E-commerce Business
This paper introduces how to infer trust relationships from billion-scale networked data to benefit Alibaba E-Commerce business. To effectively leverage the network correlations between labeled and unlabeled relationships to predict trust relationships, we formalize trust into multiple types and propose a graphical model to incorporate type-based dyadic and triadic correlations, namely eTrust. We also present a fast learning algorithm in order to handle billion-scale networks. Systematically, we evaluate the proposed methods on four different genres of datasets with labeled trust relationships: Alibaba, Epinions, Ciao, and Advogato. Experimental results show that the proposed methods achieve significantly better performance than several comparison methods (+1.7-32.3% by accuracy; p <; <; 0:01, with t-test). Most importantly, when handling the real large networked data with over 1,200,000,000 edges (Ali-large), our method achieves 2,000× speedup to infer trust relationships, comparing with the traditional graph learning algorithms. Finally, we have applied the inferred trust relationships to Alibaba E-commerce platform: Taobao, and achieved 2.75 percent improvement on gross merchandise volume (GMV).
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