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Similarity Learning for Product Recommendation and Scoring Using Multi-channel Data

机译:相似性学习产品推荐和使用多通道数据进行评分

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Customers may interact with a retail store through many channels. Technology now makes it is possible to track customer behavior across channels. We propose a system where items are recommended based on learning channel specific similarities between customers and items. This is done by treating recommendations as a learning to rank problem and minimizing rank loss with surrogate loss functions. We build our system using a real world multi-channel data set -- online browse and purchase, and in-store purchase -- from a retail chain. The results show that using learned similarity scores improves the performance of the system over scores generated using standard cosine similarity measures. Finally, using our learning to rank formulation we introduce a product scoring system to measure consumption behavior.
机译:客户可以通过许多渠道与零售商店进行互动。技术现在使得可以在频道上跟踪客户行为。我们提出了一个系统,其中建议基于学习渠道在客户和项目之间的具体相似性。这是通过将建议视为学习的建议来完成,并利用代理损失函数最小化排名损失。我们使用现实世界的多通道数据集 - 在线浏览和购买以及店内购买 - 从零售链中建立我们的系统。结果表明,使用学习的相似性得分提高了系统对使用标准余弦相似度措施产生的分数的性能。最后,利用我们的学习对排名配方进行了介绍了一个产品评分系统来测量消耗行为。

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