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首页> 外文期刊>ACM Transactions on Information Systems >An Online Learning Framework for Refining Recency Search Results with User Click Feedback
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An Online Learning Framework for Refining Recency Search Results with User Click Feedback

机译:在线学习框架,用于通过用户点击反馈来优化新近度搜索结果

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摘要

Traditional machine-learned ranking systems for Web search are often trained to capture stationary relevance of documents to queries, which have limited ability to track nonstationary user intention in a timely manner. In recency search, for instance, the relevance of documents to a query on breaking news often changes significantly over time, requiring effective adaptation to user intention. In this article, we focus on recency search and study a number of algorithms to improve ranking results by leveraging user click feedback. Our contributions are threefold. First, we use commercial search engine sessions collected in a random exploration bucket for reliable offline evaluation of these algorithms, which provides an unbiased comparison across algorithms without online bucket tests. Second, we propose an online learning approach that reranks and improves the search results for recency queries near real-time based on user clicks. This approach is very general and can be combined with sophisticated click models. Third, our empirical comparison of a dozen algorithms on real-world search data suggests importance of a few algorithmic choices in these applications, including generalization across different query-document pairs, specialization to popular queries, and near real-time adaptation of user clicks for reranking.
机译:传统的用于Web搜索的机器学习的排名系统经常经过训练,以捕获文档与查询的固定相关性,而这些功能具有及时跟踪非平稳用户意图的能力有限。例如,在新近度搜索中,文档与突发新闻查询的相关性通常会随时间发生显着变化,从而需要有效适应用户的意图。在本文中,我们专注于新近度搜索,并研究了多种算法,可通过利用用户点击反馈来改善排名结果。我们的贡献是三倍。首先,我们使用收集在随机探索桶中的商业搜索引擎会话来对这些算法进行可靠的离线评估,从而无需进行在线桶测试即可对各种算法进行公正的比较。其次,我们提出了一种在线学习方法,该方法可以根据用户点击来实时重新排名和改进针对新近度查询的搜索结果。这种方法非常通用,可以与复杂的点击模型结合使用。第三,我们对现实世界搜索数据上的十几种算法进行的经验比较表明,在这些应用程序中一些算法选择的重要性,包括跨不同查询文档对的概括,针对流行查询的专门化以及用户点击的近实时适应重新排名。

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