为情人节购物的时间:电子商务中的购物场合和顺序推荐

Jianling Wang, Raphael Louca, D. Hu, Caitlin Cellier, James Caverlee, Liangjie Hong
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引用次数: 24

摘要

目前,大多数基于序列的推荐模型旨在根据用户过去的行为预测用户的下一步行为(例如下一次购买)。这些模型要么从用户的长期行为模式中捕捉他们的内在偏好(例如,喜剧爱好者或幻想迷),要么通过强调最近的行为来推断他们当前的需求。然而,在电子商务中,用户的内在行为可能会因生日、纪念日或礼物庆祝活动(情人节或母亲节)等场合而改变,从而导致购买偏离长期偏好,与最近的行为无关。在这项工作中,我们提出了一个新的下一项推荐系统,该系统模拟了用户的默认、内在偏好,以及两种不同类型的基于场合的信号,这些信号可能导致用户偏离他们的正常行为。更具体地说,这个模型是新颖的,因为它:(1)使用一个关注层捕获个人场合信号,该关注层对该用户特定的重复出现的场合(例如生日)进行建模;(2)使用关注层捕获全局场合信号,该关注层为许多用户(例如圣诞节)模拟季节性或重复发生的场合;(3)利用门控层平衡不同用户在不同时间戳的个人和全局场合信号与用户的内在偏好。我们探索了两个现实世界的电子商务数据集(亚马逊和Etsy),并表明所提出的模型在预测用户下一次购买方面比最先进的模型高出7.62%和6.06%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Time to Shop for Valentine's Day: Shopping Occasions and Sequential Recommendation in E-commerce
Currently, most sequence-based recommendation models aim to predict a user's next actions (e.g. next purchase) based on their past actions. These models either capture users' intrinsic preference (e.g. a comedy lover, or a fan of fantasy) from their long-term behavior patterns or infer their current needs by emphasizing recent actions. However, in e-commerce, intrinsic user behavior may be shifted by occasions such as birthdays, anniversaries, or gifting celebrations (Valentine's Day or Mother's Day), leading to purchases that deviate from long-term preferences and are not related to recent actions. In this work, we propose a novel next-item recommendation system which models a user's default, intrinsic preference, as well as two different kinds of occasion-based signals that may cause users to deviate from their normal behavior. More specifically, this model is novel in that it: (1) captures a personal occasion signal using an attention layer that models reoccurring occasions specific to that user (e.g. a birthday); (2) captures a global occasion signal using an attention layer that models seasonal or reoccurring occasions for many users (e.g. Christmas); (3) balances the user's intrinsic preferences with the personal and global occasion signals for different users at different timestamps with a gating layer. We explore two real-world e-commerce datasets (Amazon and Etsy) and show that the proposed model outperforms state-of-the-art models by 7.62% and 6.06% in predicting users' next purchase.
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