KGBridge: Knowledge-Guided Prompt Learning for Non-overlapping Cross-Domain Recommendation
Yuhan Wang, Qing Xie, Zhifeng Bao, Mengzi Tang, Lin Li, Yongjian Liu

TL;DR
KGBridge introduces a novel knowledge-guided prompt learning framework that effectively enhances non-overlapping cross-domain recommendation by disentangling domain-shared and domain-specific knowledge, improving stability and transferability.
Contribution
It proposes a relation-aware prompt encoder and a two-stage training paradigm to address key challenges in non-overlapping cross-domain recommendation.
Findings
Outperforms state-of-the-art baselines on benchmark datasets.
Robust under varying KG sparsity levels.
Effectively disentangles shared and domain-specific knowledge.
Abstract
Knowledge Graphs (KGs), as structured knowledge bases that organize relational information across diverse domains, provide a unified semantic foundation for cross-domain recommendation (CDR). By integrating symbolic knowledge with user-item interactions, KGs enrich semantic representations, support reasoning, and enhance model interpretability. Despite this potential, existing KG-based methods still face major challenges in CDR, particularly under non-overlapping user scenarios. These challenges arise from: (C1) sensitivity to KG sparsity and popularity bias, (C2) dependence on overlapping users for domain alignment and (C3) lack of explicit disentanglement between transferable and domain-specific knowledge, which limit effective and stable knowledge transfer. To this end, we propose KGBridge, a knowledge-guided prompt learning framework for cross-domain sequential recommendation under…
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Taxonomy
TopicsAdvanced Graph Neural Networks · Recommender Systems and Techniques · Topic Modeling
