TellMyRelevance !:根据游标交互预测网络搜索结果的相关性

Maximilian Speicher, A. Both, M. Gaedke
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引用次数: 22

摘要

以最好的方式回答用户的查询对于搜索驱动的web应用程序的成功是至关重要的。一种常见的方法是使用点击模型来猜测搜索结果的相关性。然而,这些模型是不精确的,并且放弃了可以从非点击用户交互中获得的有价值的信息。我们推出TellMyRelevance!-一种新颖的自动端到端管道,用于跟踪客户端的光标交互,分析这些并根据相关模型进行学习。然而,这些模型依赖于所涉及的搜索结果页面的布局,这使得它们难以评估和比较。因此,我们使用随机鼠标光标作为生成依赖于布局的基线的管道的扩展。基于这些,我们可以对现实世界的相关模型进行评估。大规模的交互日志分析表明,我们可以学习相关模型,其预测比现有的最先进的点击模型的预测更有利。
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TellMyRelevance!: predicting the relevance of web search results from cursor interactions
It is crucial for the success of a search-driven web application to answer users' queries in the best possible way. A common approach is to use click models for guessing the relevance of search results. However, these models are imprecise and waive valuable information one can gain from non-click user interactions. We introduce TellMyRelevance!---a novel automatic end-to-end pipeline for tracking cursor interactions at the client, analyzing these and learning according relevance models. Yet, the models depend on the layout of the search results page involved, which makes them difficult to evaluate and compare. Thus, we use a Random Mouse Cursor as an extension to our pipeline for generating layout-dependent baselines. Based on these, we can perform evaluations of real-world relevance models. A large-scale interaction log analysis showed that we can learn relevance models whose predictions compare favorably to predictions of an existing state-of-the-art click model.
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