Publication | Closed Access
TwHIN: Embedding the Twitter Heterogeneous Information Network for Personalized Recommendation
39
Citations
42
References
2022
Year
Social Network EntitiesEngineeringLink PredictionText MiningWord EmbeddingsNatural Language ProcessingComputational Social ScienceSocial MediaData ScienceEmbeddingsNews RecommendationSocial Network AnalysisSocial Medium MiningKnowledge DiscoveryComputer ScienceCold-start ProblemPersonalized RecommendationKnowledge-graph EmbeddingsTwitter HinGroup RecommendersNetwork ScienceSocial ComputingBusinessSocial Medium DataCollaborative Filtering
Social networks, such as Twitter, form a heterogeneous information network (HIN) where nodes represent domain entities (e.g., user, content, advertiser, etc.) and edges represent one of many entity interactions (e.g, a user re-sharing content or "following" another). Interactions from multiple relation types can encode valuable information about social network entities not fully captured by a single relation; for instance, a user's preference for accounts to follow may depend on both user-content engagement interactions and the other users they follow. In this work, we investigate knowledge-graph embeddings for entities in the Twitter HIN (TwHIN); we show that these pretrained representations yield significant offline and online improvement for a diverse range of downstream recommendation and classification tasks: personalized ads rankings, account follow-recommendation, offensive content detection, and search ranking. We discuss design choices and practical challenges of deploying industry-scale HIN embeddings, including compressing them to reduce end-to-end model latency and handling parameter drift across versions.
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