关于排序:美团搜索多业务商品排序探索与实践

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随着美团零售商品类业务的一直倒退,美团搜寻在多业务商品排序场景上面临着诸多的挑战。本文介绍了美团搜寻在商品多业务排序上相干的摸索以及实际,心愿能对从事相干工作的同学有所帮忙或者启发。

参考资料

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作者简介

曹越、瑶鹏、诗晓、李想、家琪、可依、晓江、肖垚、培浩、达遥、陈胜、云森、利前均来自美团平台搜寻与 NLP 部。

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