Publication | Closed Access
Building Semantic Based Recommender System Using Knowledge Graph Embedding
24
Citations
17
References
2021
Year
Natural Language ProcessingGroup RecommendersEngineeringInformation RetrievalMachine LearningData MiningData ScienceKnowledge Graph EmbeddingsKnowledge DiscoveryConversational Recommender SystemBuilding SemanticCollaborative FilteringSemantic WebCold-start ProblemSemantic GraphManual Feature ExtractionRecommendation SystemsText Mining
Recommendation systems are information filtering mechanisms used in E-commerce, media and entertainment industry. It essentially facilitate the customers for a better user experience by processing the content user-specific. This is known as personalization. However, though leveraged by machine learning algorithms existing recommendation systems, still suffers from the problem of cold-start and sparcity. These problems could be resolved by using knowledge graphs since it gives a semantic explanation of recommendations. Also, graph learning method overcomes the problems of manual feature extraction and is effective for feature learning in predicting tasks. In this research, we develop a semantic based recommender through link prediction in a knowledge graph. We apply graph embedding techniques for extracting the semantics of explicable recommendations. The proposed method is validated by building a knowledge graph using the MovieLens dataset. We observed that factorization based scoring functions such as HolE and DistMult provides better semantic recommendations.
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