In recent years, group buying has become one popular kind of online shopping activity, thanks to its larger sales and lower unit price. Unfortunately, research seldom focuses on recommendations specifically for group buying by now. Although some recommendation models have been proposed for group recommendation, they can not be directly used to achieve real-world group buying recommendation, due to the essential difference between group recommendation and group buying recommendation. In this paper, we first formalize the task of group buying recommendations into two sub-tasks. Then, based on our insights into the correlations and interactions between the two sub-tasks, we propose a novel recommendation model for group buying, MGBR, built mainly with a multi-task learning module. To improve recommendation performance further, we devise some collaborative expert networks and adjusted gates in the multi-task learning module, to promote the information interaction between the two sub-tasks. Furthermore, we propose two auxiliary losses corresponding to the two sub-tasks, to refine the representation learning in our model. Our extensive experiments not only demonstrate that the augmented representations in our model result in better performance than previous recommendation models, but also justify the impacts of the specially designed components in our model.
翻译:近年来,由于销售量较大,单价较低,集体购买已成为一种流行的在线购物活动。不幸的是,研究很少侧重于专门为集团购买而提出的建议。虽然为集团建议提出了一些建议模式,但由于集团建议与集团购买建议之间的根本差异,无法直接用于实现真实世界集团购买建议。在本文件中,我们首先将集团购买建议的任务正式化为两个子任务。然后,根据我们对两个子任务之间相互关系和互动的洞察,我们提出了一个新的集团购买建议模式,即主要用多任务学习模块建造的MGBR。为进一步改进建议绩效,我们设计了一些合作专家网络和多任务学习模块中经过调整的大门,以促进两个子任务之间的信息互动。此外,我们提出了与两个子任务相对应的两个附带损失,以完善我们模型中的代表性学习。我们的广泛实验不仅表明我们模型中扩大的表述结果比以前的建议模式表现更好,而且还证明了我们模型中专门设计的组件的影响。