A large number of empirical studies on applying self-attention models in the domain of recommender systems are based on offline evaluation and metrics computed on standardized datasets, without insights on how these models perform in real life scenarios. Moreover, many of them do not consider information such as item and customer metadata, although deep-learning recommenders live up to their full potential only when numerous features of heterogeneous types are included. Also, typically recommendation models are designed to serve well only a single use case, which increases modeling complexity and maintenance costs, and may lead to inconsistent customer experience. In this work, we present a reusable Attention-based Fashion Recommendation Algorithm (AFRA), that utilizes various interaction types with different fashion entities such as items (e.g., shirt), outfits and influencers, and their heterogeneous features. Moreover, we leverage temporal and contextual information to address both short and long-term customer preferences. We show its effectiveness on outfit recommendation use cases, in particular: 1) personalized ranked feed; 2) outfit recommendations by style; 3) similar item recommendation and 4) in-session recommendations inspired by most recent customer actions. We present both offline and online experimental results demonstrating substantial improvements in customer retention and engagement.
翻译:关于在建议者系统领域应用自我注意模式的大量经验性研究是根据离线评价和标准化数据集计算出的尺度进行的,没有洞察这些模型在现实生活情景中如何运作;此外,其中许多不考虑物品和客户元数据等信息,尽管深学习建议者只有在包含多种不同类型特征时才能充分发挥其潜力;此外,通常建议模型只设计用于一个单一用途案例,这增加了建模的复杂性和维护成本,并可能导致客户经验不一致;在这项工作中,我们提出了一个基于注意的时装建议(AFRA),利用与不同时装实体(例如衬衫)、服装和影响力者及其不同特征的各种互动类型;此外,我们利用时间和背景信息解决短期和长期客户偏好;我们展示了其有效性,特别是:1)个性化排名反馈;2)风格化建议;3)类似项目和4)会议期间建议,其依据是最近客户行动所启发的。我们介绍了离线和在线客户参与情况,展示了客户参与情况的重大改进。