Nowadays, E-commerce is increasingly integrated into our daily lives. Meanwhile, shopping process has also changed incrementally from one behavior (purchase) to multiple behaviors (such as view, carting and purchase). Therefore, utilizing interaction data of auxiliary behavior data draws a lot of attention in the E-commerce recommender systems. However, all existing models ignore two kinds of intrinsic heterogeneity which are helpful to capture the difference of user preferences and the difference of item attributes. First (intra-heterogeneity), each user has multiple social identities with otherness, and these different identities can result in quite different interaction preferences. Second (inter-heterogeneity), each item can transfer an item-specific percentage of score from low-level behavior to high-level behavior for the gradual relationship among multiple behaviors. Thus, the lack of consideration of these heterogeneities damages recommendation rank performance. To model the above heterogeneities, we propose a novel method named intra- and inter-heterogeneity recommendation model (ARGO). Specifically, we embed each user into multiple vectors representing the user's identities, and the maximum of identity scores indicates the interaction preference. Besides, we regard the item-specific transition percentage as trainable transition probability between different behaviors. Extensive experiments on two real-world datasets show that ARGO performs much better than the state-of-the-art in multi-behavior scenarios.
翻译:目前,电子商务日益融入我们的日常生活。与此同时,购物过程也逐渐从一种行为(购买)逐渐改变为多种行为(例如查看、汽车和购买)。因此,利用辅助行为数据的互动数据在电子商务建议系统中引起许多注意。然而,所有现有模型都忽略了两种固有的异质性,它们有助于捕捉用户偏好的差异和项目属性的差异。首先(异质性),每个用户具有多种社会特征和其他特征,这些不同身份可导致相当不同的互动偏好。第二(异质间),每个项目可以将一个特定项目的得分百分比从低级行为转移到高层行为,从而在多个行为之间逐渐建立关系。因此,不考虑这些异质性会损害建议的等级性能。为了模拟上述异质性,我们提出了一种名为内部和异质建议模式(异质建议模式)的新方法。具体地,这些不同的身份可以导致相当不同的互动偏好。第二(异性),每个项目可以将一个特定用户的得分百分比转移到多个矢量矢量的矢量中,而最大程度的身份识别度的行为偏差度则显示全球变异性数据偏观。此外,在不同的变变变变的概率中,在甚甚甚甚甚甚甚甚深的轨道上。