Incorporating Non-sequential Behavior into Click Models

Chao Wang, Yiqun Liu, Meng Wang, K. Zhou, Jian-Yun Nie, Shaoping Ma
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引用次数: 57

Abstract

Click-through information is considered as a valuable source of users' implicit relevance feedback. As user behavior is usually influenced by a number of factors such as position, presentation style and site reputation, researchers have proposed a variety of assumptions (i.e.~click models) to generate a reasonable estimation of result relevance. The construction of click models usually follow some hypotheses. For example, most existing click models follow the sequential examination hypothesis in which users examine results from top to bottom in a linear fashion. While these click models have been successful, many recent studies showed that there is a large proportion of non-sequential browsing (both examination and click) behaviors in Web search, which the previous models fail to cope with. In this paper, we investigate the problem of properly incorporating non-sequential behavior into click models. We firstly carry out a laboratory eye-tracking study to analyze user's non-sequential examination behavior and then propose a novel click model named Partially Sequential Click Model (PSCM) that captures the practical behavior of users. We compare PSCM with a number of existing click models using two real-world search engine logs. Experimental results show that PSCM outperforms other click models in terms of both predicting click behavior (perplexity) and estimating result relevance (NDCG and user preference test). We also publicize the implementations of PSCM and related datasets for possible future comparison studies.
将非顺序行为合并到点击模型中
点击信息被认为是用户隐性相关性反馈的重要来源。由于用户行为通常受到许多因素的影响,如位置、展示风格和网站声誉,研究人员提出了各种假设(即~点击模型)来产生对结果相关性的合理估计。点击模型的构建通常遵循一些假设。例如,大多数现有的单击模型遵循顺序检查假设,其中用户以线性方式从上到下检查结果。虽然这些点击模型已经取得了成功,但最近的许多研究表明,在Web搜索中存在很大比例的非顺序浏览(检查和点击)行为,这是以前的模型无法处理的。在本文中,我们研究了正确地将非顺序行为纳入点击模型的问题。本文首先通过实验室眼动追踪研究分析了用户的非顺序检查行为,然后提出了一种捕捉用户实际行为的新颖点击模型——部分顺序点击模型(PSCM)。我们使用两个真实的搜索引擎日志将PSCM与许多现有的点击模型进行比较。实验结果表明,PSCM在预测点击行为(困惑度)和估计结果相关性(NDCG和用户偏好测试)方面都优于其他点击模型。我们还公布了PSCM的实现和相关数据集,以便将来可能的比较研究。
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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