With the continuous development of Retailer category business of Meituan, Meituan search is faced with many challenges in multi-business commodity ranking scenarios. This paper introduces the exploration and practice of meituan search in commodity multi-business ranking, hoping to be of help or inspiration to students engaged in related work.
The resources
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Author’s brief introduction
Cao Yue, Yao Peng, Shi Xiao, Li Xiang, Jia Qi, Ke Yi, Xiao Jiang, Xiao Yao, Peihao, Da Yao, Chen Sheng, Yun Sen and Li Qian are all from the Meituan platform search and NLP department.