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Online Learning for Recency Search Ranking Using Real-time User Feedback

机译:使用实时用户反馈在线学习新近度搜索排名

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Traditional machine-learned ranking algorithms for web search are trained in batch mode, which assume static relevance of documents for a given query. Although such a batch-learning framework has been tremendously successful in commercial search engines, in scenarios where relevance of documents to a query changes over time, such as ranking recent documents for a breaking news query, the batch-learned ranking functions do have limitations. Users' real-time click feedback becomes a better and timely proxy for the varying relevance of documents rather than the editorial judgments provided by human editors. In this paper, we propose an online learning algorithm that can quickly learn the best re-ranking of the top portion of the original ranked list based on real-time users' click feedback. In order to devise our algorithm and evaluate it accurately, we collected exploration bucket data that removes positional biases on clicks on the documents for recency-classified queries. Our initial experimental result shows that our scheme is more capable of quickly adjusting the ranking to track the varying relevance of documents reflected in the click feedback, compared to batch-trained ranking functions.
机译:用于网络搜索的传统机器学习排序算法是以批处理模式进行训练的,该算法假定文档与给定查询的静态相关性。尽管这样的批处理学习框架在商业搜索引擎中已经取得了巨大的成功,但是在文档与查询的相关性随时间而变化的情况下(例如对突发新闻查询的最新文档进行排名),批处理学习的排名功能确实存在局限性。用户的实时单击反馈可以更好,及时地代替文档的相关性,而不是人工编辑提供的编辑判断。在本文中,我们提出了一种在线学习算法,该算法可以根据实时用户的点击反馈快速学习对原始排名列表的顶部进行最佳重新排名。为了设计我们的算法并进行准确评估,我们收集了探查数据,该数据消除了针对按新近度分类的查询单击文档时的位置偏倚。我们的初步实验结果表明,与批量训练的排名功能相比,我们的方案更有能力快速调整排名,以跟踪点击反馈中反映的文档的变化相关性。

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