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Social Knowledge for Cross-Domain User Preference Modeling

arXiv cs.AI / 3/12/2026

💬 OpinionIdeas & Deep AnalysisModels & Research

Key Points

  • The paper demonstrates cross-domain user preference modeling by projecting users and popular entities into a joint social embedding space learned from a large Twitter network, enabling relevance assessment via cosine similarity in this space.
  • It shows zero-shot personalization that yields substantial improvements over a strong popularity-based baseline when no user feedback exists for the target domain.
  • The analysis finds that socio-demographic factors encoded in the social embeddings correlate with user preferences across domains, offering interpretable insights.
  • It argues and demonstrates that the proposed social modeling approach can facilitate end-user modeling using large language models (LLMs), suggesting integration with LLM-based workflows.

Abstract

We demonstrate that user preferences can be represented and predicted across topical domains using large-scale social modeling. Given information about popular entities favored by a user, we project the user into a social embedding space learned from a large-scale sample of the Twitter (now X) network. By representing both users and popular entities in a joint social space, we can assess the relevance of candidate entities (e.g., music artists) using cosine similarity within this embedding space. A comprehensive evaluation using link prediction experiments shows that this method achieves effective personalization in zero-shot setting, when no user feedback is available for entities in the target domain, yielding substantial improvements over a strong popularity-based baseline. In-depth analysis further illustrates that socio-demographic factors encoded in the social embeddings are correlated with user preferences across domains. Finally, we argue and demonstrate that the proposed approach can facilitate social modeling of end users using large language models (LLMs).