CDR-Adapter: Learning Adapters to Dig Out More Transferring Ability for Cross-Domain Recommendation Models
Chen, Yanyu, Yao, Yao, Chan, Wai Kin Victor, Xiao, Li, Zhang, Kai, Zhang, Liang, Ye, Yun
–arXiv.org Artificial Intelligence
Data sparsity and cold-start problems are persistent challenges in recommendation systems. Cross-domain recommendation (CDR) is a promising solution that utilizes knowledge from the source domain to improve the recommendation performance in the target domain. Previous CDR approaches have mainly followed the Embedding and Mapping (EMCDR) framework, which involves learning a mapping function to facilitate knowledge transfer. However, these approaches necessitate re-engineering and re-training the network structure to incorporate transferrable knowledge, which can be computationally expensive and may result in catastrophic forgetting of the original knowledge. In this paper, we present a scalable and efficient paradigm to address data sparsity and cold-start issues in CDR, named CDR-Adapter, by decoupling the original recommendation model from the mapping function, without requiring re-engineering the network structure. Specifically, CDR-Adapter is a novel plug-and-play module that employs adapter modules to align feature representations, allowing for flexible knowledge transfer across different domains and efficient fine-tuning with minimal training costs. We conducted extensive experiments on the benchmark dataset, which demonstrated the effectiveness of our approach over several state-of-the-art CDR approaches.
arXiv.org Artificial Intelligence
Nov-4-2023
- Country:
- Asia
- China
- Guangdong Province > Shenzhen (0.05)
- Shanghai > Shanghai (0.04)
- Taiwan > Taiwan Province
- Taipei (0.05)
- China
- North America > United States
- New York > New York County > New York City (0.04)
- Asia
- Genre:
- Research Report > Promising Solution (0.34)
- Technology: