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Cascade Ranking for Operational E-commerce Search

机译:Cascade排名为操作电子商务搜索

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In the "Big Data" era, many real-world applications like search involve the ranking problem for a large number of items. It is important to obtain effective ranking results and at the same time obtain the results efficiently in a timely manner for providing good user experience and saving computational costs. Valuable prior research has been conducted for learning to efficiently rank like the cascade ranking (learning) model, which uses a sequence of ranking functions to progressively filter some items and rank the remaining items. However, most existing research of learning to efficiently rank in search is studied in a relatively small computing environments with simulated user queries. This paper presents novel research and thorough study of designing and deploying a Cascade model in a Large-scale Operational Ecommerce Search application (CLOES), which deals with hundreds of millions of user queries per day with hundreds of servers. The challenge of the real-world application provides new insights for research: 1). Real-world search applications often involve multiple factors of preferences or constraints with respect to user experience and computational costs such as search accuracy, search latency, size of search results and total CPU cost, while most existing search solutions only address one or two factors; 2). Effectiveness of ecommerce search involves multiple types of user behaviors such as click and purchase, while most existing cascade ranking in search only models the click behavior. Based on these observations, a novel cascade ranking model is designed and deployed in an operational e-commerce search application. An extensive set of experiments demonstrate the advantage of the proposed work to address multiple factors of effectiveness, efficiency and user experience in the real-world application.
机译:在“大数据”时代,许多真实世界应用程序,如搜索涉及大量项目的排名问题。重要的是获得有效排名结果,同时以及时的方式获得结果,以便提供良好的用户体验和节省计算成本。已经进行了有价值的先验研究,以便学习有效地等级,如级联排名(学习)模型,它使用一系列排名函数来逐步过滤一些项目并对剩余物品进行排名。然而,在具有模拟用户查询的相对较小的计算环境中,研究了对学习的最有效排序的最多现有研究。本文介绍了在大型运营电子商务搜索应用程序(封锁)中设计和部署级联模型的新型研究和彻底研究,这些模型与数百个服务器交出每天数亿用户查询。现实世界申请的挑战为研究提供了新的见解:1)。真实世界搜索应用程序通常涉及关于用户体验和计算成本的多个偏好或约束因素,例如搜索准确性,搜索延迟,搜索结果的大小和总CPU成本,而大多数现有的搜索解决方案仅解决一个或两个因素; 2)。电子商务搜索的有效性涉及多种类型的用户行为,例如点击和购买,而大多数现有的级联排名在搜索中只有拼凑的单击行为。基于这些观察,在操作电子商务搜索应用程序中设计并部署了一种新型级联排名模型。一系列广泛的实验表明了所提出的工作,以解决现实世界应用中的多种有效性,效率和用户体验的多种因素。

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