Towards Personalized and Semantic Retrieval: An End-to-End Solution for E-commerce Search via Embedding Learning

3 Jun 2020Han ZhangSonglin WangKang ZhangZhiling TangYunjiang JiangYun XiaoWeipeng YanWen-Yun Yang

Nowadays e-commerce search has become an integral part of many people's shopping routines. Two critical challenges stay in today's e-commerce search: how to retrieve items that are semantically relevant but not exact matching to query terms, and how to retrieve items that are more personalized to different users for the same search query... (read more)

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