Large-scale e-commercial platforms in the real-world usually contain various recommendation scenarios (domains) to meet demands of diverse customer groups. Multi-Domain Recommendation (MDR), which aims to jointly improve recommendations on all domains and easily scales to thousands of domains, has attracted increasing attention from practitioners and researchers. Existing MDR methods usually employ a shared structure and several specific components to respectively leverage reusable features and domain-specific information. However, data distribution differs across domains, making it challenging to develop a general model that can be applied to all circumstances. Additionally, during training, shared parameters often suffer from the domain conflict while specific parameters are inclined to overfitting on data sparsity domains. we first present a scalable MDR platform served in Taobao that enables to provide services for thousands of domains without specialists involved. To address the problems of MDR methods, we propose a novel model agnostic learning framework, namely MAMDR, for the multi-domain recommendation. Specifically, we first propose a Domain Negotiation (DN) strategy to alleviate the conflict between domains. Then, we develop a Domain Regularization (DR) to improve the generalizability of specific parameters by learning from other domains. We integrate these components into a unified framework and present MAMDR, which can be applied to any model structure to perform multi-domain recommendation. Finally, we present a large-scale implementation of MAMDR in the Taobao application and construct various public MDR benchmark datasets which can be used for following studies. Extensive experiments on both benchmark datasets and industry datasets demonstrate the effectiveness and generalizability of MAMDR.
翻译:在现实世界中,大型电子商业平台通常包含各种建议情景(域),以满足不同客户群体的需求。多域建议(MDR)旨在共同改进所有领域的建议,容易推广到数千个领域。现有的MDR方法通常使用共同结构和若干具体组成部分,分别利用可重复使用的特点和特定领域的信息。然而,数据分布在不同的领域各不相同,因此难以开发一个适用于所有情况的一般模型。此外,在培训期间,共享参数往往因域冲突而受到影响,而具体参数往往过于适应数据宽度域。我们首先在道保内推出一个可缩放的MDR平台,以便能够在没有专家参与的情况下为数千个领域提供服务。为了解决MDR方法的问题,我们提出了一个新的模型,即MAMDR,用于多域建议。我们首先提出了一种Dmain谈判(DN)战略,用于缓解各域间冲突。然后,我们开发一个DR(DR)常规模型,用于改善数据宽度的一般模型,将数据缩略图中的任何数据缩略图从学习到MDR。</s>