Decentralized Multi-Target Cross-Domain Recommendation for Multi-Organization Collaborations
This addresses the problem of data privacy and collaboration barriers for organizations using recommender systems, offering a decentralized solution that is incremental in its approach.
The paper tackles the challenge of multiple organizations collaborating to improve recommendation accuracy without sharing sensitive data, proposing a decentralized method that significantly outperforms locally trained recommender systems and mitigates the cold start problem.
Recommender Systems (RSs) are operated locally by different organizations in many realistic scenarios. If various organizations can fully share their data and perform computation in a centralized manner, they may significantly improve the accuracy of recommendations. However, collaborations among multiple organizations in enhancing the performance of recommendations are primarily limited due to the difficulty of sharing data and models. To address this challenge, we propose Decentralized Multi-Target Cross-Domain Recommendation (DMTCDR) with Multi-Target Assisted Learning (MTAL) and Assisted AutoEncoder (AAE). Our method can help multiple organizations collaboratively improve their recommendation performance in a decentralized manner without sharing sensitive assets. Consequently, it allows decentralized organizations to collaborate and form a community of shared interest. We conduct extensive experiments to demonstrate that the new method can significantly outperform locally trained RSs and mitigate the cold start problem.