时尚行业应用中可重用的自我关注推荐系统

Marjan Celikik, Ana Peleteiro-Ramallo, Jacek Wasilewski
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引用次数: 2

摘要

在推荐系统领域应用自关注模型的大量实证研究都是基于在标准化数据集上计算的离线评价和度量。此外,他们中的许多人没有考虑诸如商品和客户元数据之类的附加信息,尽管深度学习推荐只有在包含大量异构类型的特征时才能充分发挥其潜力。此外,通常该模型仅用于单个用例。由于这些缺点,即使相关,以前的工作并不总是代表他们在实际工业应用中的实际效果。在这次演讲中,我们将通过展示用户留存率提高30%的现场实验结果来弥合这一差距。此外,我们还分享了为时尚行业的各种应用程序构建可重用和可配置的推荐系统的经验和挑战。我们特别关注时尚灵感用例,如服装排名、服装推荐和实时个性化服装生成。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Reusable Self-Attention Recommender Systems in Fashion Industry Applications
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.
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