Concepts embody the knowledge of the world and facilitate the cognitive processes of human beings. Mining concepts from web documents and constructing the corresponding taxonomy are core research problems in text understanding and support many downstream tasks such as query analysis, knowledge base construction, recommendation, and search. However, we argue that most prior studies extract formal and overly general concepts from Wikipedia or static web pages, which are not representing the user perspective. In this paper, we describe our experience of implementing and deploying ConcepT in Tencent QQ Browser. It discovers user-centered concepts at the right granularity conforming to user interests, by mining a large amount of user queries and interactive search click logs. The extracted concepts have the proper granularity, are consistent with user language styles and are dynamically updated. We further present our techniques to tag documents with user-centered concepts and to construct a topic-concept-instance taxonomy, which has helped to improve search as well as news feeds recommendation in Tencent QQ Browser. We performed extensive offline evaluation to demonstrate that our approach could extract concepts of higher quality compared to several other existing methods. Our system has been deployed in Tencent QQ Browser. Results from online A/B testing involving a large number of real users suggest that the Impression Efficiency of feeds users increased by 6.01% after incorporating the user-centered concepts into the recommendation framework of Tencent QQ Browser.
翻译:网络文件中的采矿概念和构建相应的分类学是文字理解和支持诸如查询分析、知识基础构建、建议和搜索等许多下游任务的核心研究问题。然而,我们争辩说,大多数先前的研究都从维基百科或静态网页中提取正式和过于笼统的概念,这些概念并不代表用户的观点。在本文中,我们描述了我们在Tententent & 浏览器中实施和部署ConcepT的经验。它在符合用户兴趣的右粒子中发现了以用户为中心的概念。我们进行了广泛的离线评价,以表明我们的方法可以提取质量高于其他几种现有用户查询和交互式搜索点击日志的概念。所提取的概念具有适当的颗粒性,与用户语言风格一致,并动态更新。我们进一步展示了我们用用户核心概念标记文件的技巧,并构建了一个专题感应感应感应分类学,这有助于改进Tentent & 浏览器中的搜索和新闻反馈建议。我们进行了广泛的离线评价,以表明我们的方法可以提取质量高于其他现有方法的理念。我们所提取的概念具有适当的颗粒质特性,并动态更新了用户在网上浏览器后,建议。