Publication | Closed Access
Jointly Non-Sampling Learning for Knowledge Graph Enhanced Recommendation
72
Citations
41
References
2020
Year
Unknown Venue
EngineeringMachine LearningNon-sampling LearningText MiningKnowledge Graph EmbeddingsInformation RetrievalData ScienceData MiningEmbeddingsNegative SamplingKnowledge DiscoveryComputer ScienceKnowledge GraphsCold-start ProblemDeep LearningGroup RecommendersRecommendation TaskGraph Neural NetworkCollaborative Filtering
Knowledge graph (KG) contains well-structured external information and has shown to be effective for high-quality recommendation. However, existing KG enhanced recommendation methods have largely focused on exploring advanced neural network architectures to better investigate the structural information of KG. While for model learning, these methods mainly rely on Negative Sampling (NS) to optimize the models for both KG embedding task and recommendation task. Since NS is not robust (e.g., sampling a small fraction of negative instances may lose lots of useful information), it is reasonable to argue that these methods are insufficient to capture collaborative information among users, items, and entities.
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