A long-standing challenge in Recommender Systems (RCs) is the data sparsity problem that often arises when users rate very few items. Multi-Target Multi-Domain Recommender Systems (MTMDR) aim to improve the recommendation performance in multiple domains simultaneously. The existing works assume that the data of different domains can be fully shared, and the computation can be performed in a centralized manner. However, in many realistic scenarios, separate recommender systems are operated by different organizations, which do not allow the sharing of private data, models, and recommendation tasks. This work proposes an MTMDR based on Assisted AutoEncoders (AAE) and Multi-Target Assisted Learning (MTAL) to help organizational learners improve their recommendation performance simultaneously without sharing sensitive assets. Moreover, AAE has a broad application scope since it allows explicit or implicit feedback, user- or item-based alignment, and with or without side information. Extensive experiments demonstrate that our method significantly outperforms the case where each domain is locally trained, and it performs competitively with the centralized training where all data are shared. As a result, AAE can effectively integrate organizations from different domains to form a community of shared interest.
翻译:在建议系统(RCs)中,一个长期存在的挑战是,当用户对很少的项目进行评分时往往会出现数据宽度问题。多目标多功能多功能建议系统(MTMDR)旨在同时改善多个领域的建议性能。现有工作假设,不同领域的数据可以充分共享,计算可以集中进行。然而,在许多现实的情景中,不同的建议系统是由不同组织操作的,不允许分享私人数据、模型和建议任务。这项工作提议以辅助自动编码器和多目标辅助学习系统(MTAL)为基础进行MTMDR,以帮助组织学习者在不共享敏感资产的情况下同时提高建议性能。此外,AAE具有广泛的应用范围,因为它允许明示或暗示反馈、用户或项目调整,以及与或不包含侧边信息。广泛的实验表明,我们的方法大大超越了每个领域都接受当地培训的情况,它与所有数据共享的集中培训相竞争。结果,AAEE可以有效地将不同领域的组织整合到共享的形式。