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. Moreover, many of them do not consider side information such as item and customer metadata although deep-learning recommenders live up to their full potential only when numerous features of heterogeneous type are included. Also, normally the model is used only for a single use case. Due to these shortcomings, even if relevant, previous works are not always representative of their actual effectiveness in real-world industry applications. In this talk, we contribute to bridging this gap by presenting live experimental results demonstrating improvements in user retention of up to 30\%. Moreover, we share our learnings and challenges from building a re-usable and configurable recommender system for various applications from the fashion industry. In particular, we focus on fashion inspiration use-cases, such as outfit ranking, outfit recommendation and real-time personalized outfit generation.
翻译:在推荐人系统领域应用自我注意模式的大量经验研究是以离线评价和标准化数据集计算尺度为基础的;此外,其中许多不考虑物品和客户元数据等侧面信息,尽管深学习建议者只有在包含多种不同类型特征时才充分发挥潜力;此外,该模式通常只用于一个单一的使用案例;由于这些缺陷,即使相关,以往的工作并不总是能反映其在现实世界产业应用中的实际效力;在本次讨论中,我们通过提供现场实验结果,展示用户保留多达30 ⁇ 的改进,为弥补这一差距作出贡献;此外,我们分享了在为时装行业的各种应用建立一个可再使用和可配置的推荐系统方面的学习和挑战;特别是,我们侧重于时尚灵感使用案例,如排位、配置建议和实时个人化的生成。