Adaptive Graph Integration for Cross-Domain Recommendation via Heterogeneous Graph Coordinators
Hengyu Zhang, Chunxu Shen, Xiangguo Sun, Jie Tan, Yu Rong, Chengzhi Piao, Hong Cheng, Lingling Yi

TL;DR
This paper introduces HAGO, a framework that adaptively integrates multi-domain heterogeneous graphs to improve cross-domain recommendation systems, effectively enhancing user insights and reducing negative transfer.
Contribution
HAGO is a novel adaptive graph integration framework with heterogeneous coordinators and a universal pre-training strategy for improved cross-domain recommendations.
Findings
HAGO outperforms existing methods in multiple recommendation benchmarks.
The adaptive graph coordination effectively mitigates negative transfer.
The universal pre-training enhances node representation quality across domains.
Abstract
In the digital era, users typically interact with diverse items across multiple domains (e.g., e-commerce, streaming platforms, and social networks), generating intricate heterogeneous interaction graphs. Leveraging multi-domain data can improve recommendation systems by enriching user insights and mitigating data sparsity in individual domains. However, integrating such multi-domain knowledge for cross-domain recommendation remains challenging due to inherent disparities in user behavior and item characteristics and the risk of negative transfer, where irrelevant or conflicting information from the source domains adversely impacts the target domain's performance. To tackle these challenges, we propose HAGO, a novel framework with \textbf{H}eterogeneous \textbf{A}daptive \textbf{G}raph co\textbf{O}rdinators, which dynamically integrates multi-domain graphs into a cohesive structure.…
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Taxonomy
TopicsRecommender Systems and Techniques · Expert finding and Q&A systems · Advanced Graph Neural Networks
