From Clues to Generation: Language-Guided Conditional Diffusion for Cross-Domain Recommendation
Ziang Lu, Lei Sang, Lin Mu, Yiwen Zhang

TL;DR
This paper introduces LGCD, a novel framework combining large language models and diffusion models to improve cross-domain recommendation, especially for users with interactions in only one domain.
Contribution
It proposes a language-guided diffusion approach that infers target preferences and constructs pseudo-overlapping data to enhance inter-domain recommendation accuracy.
Findings
LGCD outperforms existing methods in inter-domain recommendation tasks.
The framework effectively infers target preferences for single-domain users.
Additional supervision constraints reduce semantic noise from pseudo-interactions.
Abstract
Cross-domain Recommendation (CDR) exploits multi-domain correlations to alleviate data sparsity. As a core task within this field, inter-domain recommendation focuses on predicting preferences for users who interact in a source domain but lack behavioral records in a target domain. Existing approaches predominantly rely on overlapping users as anchors for knowledge transfer. In real-world scenarios, overlapping users are often scarce, leaving the vast majority of users with only single-domain interactions. For these users, the absence of explicit alignment signals makes fine-grained preference transfer intrinsically difficult. To address this challenge, this paper proposes Language-Guided Conditional Diffusion for CDR (LGCD), a novel framework that integrates Large Language Models (LLMs) and diffusion models for inter-domain sequential recommendation. Specifically, we leverage LLM…
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