Web搜索的上下文感知点击模型

Jia Chen, Jiaxin Mao, Yiqun Liu, Min Zhang, Shaoping Ma
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引用次数: 33

摘要

为了更好地利用搜索日志,人们提出了各种点击模型来从用户点击中提取隐含的相关性反馈。大多数传统的点击模型都是基于概率图形模型(PGMs)和手动设计的依赖关系。最近,一些研究人员也采用基于神经网络的方法来提高点击预测的准确性。然而,现有的大多数点击模型仅在查询级对用户行为进行建模。由于会话中的先前迭代可能会对当前搜索轮产生影响,因此我们可以利用这些行为信号来更好地模拟用户行为。本文提出了一种基于神经网络的上下文感知点击模型(ccm)。ccm由上下文感知的相关性估计器和考试预测器组成。相关性估计器利用会话上下文信息,即查询序列和点击数据,以及从会话流图中学习的预训练嵌入来估计每个搜索结果的上下文感知相关性。考试预测器估计每个结果的考试概率。我们进一步研究了几个组合函数,将上下文感知相关性和检查概率集成到点击预测中。在公共Web搜索数据集上的实验结果表明,ccm在相关性估计和点击预测任务上都优于现有的点击模型。
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A Context-Aware Click Model for Web Search
To better exploit the search logs, various click models have been proposed to extract implicit relevance feedback from user clicks. Most traditional click models are based on probability graphical models (PGMs) with manually designed dependencies. Recently, some researchers also adopt neural-based methods to improve the accuracy of click prediction. However, most of the existing click models only model user behavior in query level. As the previous iterations within the session may have an impact on the current search round, we can leverage these behavior signals to better model user behaviors. In this paper, we propose a novel neural- based Context-Aware Click Model (CACM) for Web search. CACM consists of a context-aware relevance estimator and an examination predictor. The relevance estimator utilizes session context infor- mation, i.e., the query sequence and clickthrough data, as well as the pre-trained embeddings learned from a session-flow graph to estimate the context-aware relevance of each search result. The examination predictor estimates the examination probability of each result. We further investigate several combination functions to integrate the context-aware relevance and examination probabil- ity into click prediction. Experiment results on a public Web search dataset show that CACM outperforms existing click models in both relevance estimation and click prediction tasks.
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