Different Users, Different Opinions: Predicting Search Satisfaction with Mouse Movement Information

Yiqun Liu, Ye Chen, Jinhui Tang, Jiashen Sun, Min Zhang, Shaoping Ma, Xuan Zhu
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引用次数: 71

Abstract

Satisfaction prediction is one of the prime concerns in search performance evaluation. It is a non-trivial task for two major reasons: (1) The definition of satisfaction is rather subjective and different users may have different opinions in satisfaction judgement. (2) Most existing studies on satisfaction prediction mainly rely on users' click-through or query reformulation behaviors but there are many sessions without such kind of interactions. To shed light on these research questions, we construct an experimental search engine that could collect users' satisfaction feedback as well as mouse click-through/movement data. Different from existing studies, we compare for the first time search users' and external assessors' opinions on satisfaction. We find that search users pay more attention to the utility of results while external assessors emphasize on the efforts spent in search sessions. Inspired by recent studies in predicting result relevance based on mouse movement patterns (namely motifs), we propose to estimate the utilities of search results and the efforts in search sessions with motifs extracted from mouse movement data on search result pages (SERPs). Besides the existing frequency-based motif selection method, two novel selection strategies (distance-based and distribution-based) are also adopted to extract high quality motifs for satisfaction prediction. Experimental results on over 1,000 user sessions show that the proposed strategies outperform existing methods and also have promising generalization capability for different users and queries.
不同的用户,不同的意见:用鼠标移动信息预测搜索满意度
满意度预测是搜索性能评估中主要关注的问题之一。这是一项不平凡的任务,主要有两个原因:(1)满意度的定义是相当主观的,不同的用户在满意度判断上可能有不同的意见。(2)大多数现有的满意度预测研究主要依赖于用户的点击或查询重构行为,但有很多会话没有这种交互。为了阐明这些研究问题,我们构建了一个实验搜索引擎,可以收集用户的满意度反馈以及鼠标点击/移动数据。与已有的研究不同,我们首次比较了搜索用户和外部评估者对满意度的看法。我们发现,搜索用户更关注结果的效用,而外部评估者则强调在搜索会话中所花费的努力。受最近基于鼠标移动模式(即基序)预测结果相关性研究的启发,我们提出使用从搜索结果页面(serp)上的鼠标移动数据提取的基序来估计搜索结果的效用和搜索会话的努力。除了现有的基于频率的基序选择方法外,还采用了基于距离和基于分布的两种新的基序选择策略来提取高质量的基序进行满意度预测。超过1000个用户会话的实验结果表明,该策略优于现有的方法,并且对不同的用户和查询具有良好的泛化能力。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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