Predicting web search success with fine-grained interaction data

Qi Guo, Dmitry Lagun, Eugene Agichtein
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引用次数: 43

Abstract

Detecting and predicting searcher success is essential for automatically evaluating and improving Web search engine performance. In the past, Web searcher behavior data, such as result clickthrough, dwell time, and query reformulation sequences, have been successfully used for a variety of tasks, including prediction of success in a search session. However, the effectiveness of the previous approaches has been limited, as they tend to ignore how searchers actually view and interact with the visited pages. We show that fine-grained interactions, such as mouse cursor movements and scrolling, provide additional clues for better predicting success of a search session as a whole. To this end, we identify patterns of examination and interaction behavior that correspond to search success, and design a new Fine-grained Session Behavior (FSB) model to capture these patterns. Our experimental results show that FSB is significantly more effective than the state-of-the-art approaches that do not use these additional interaction data.
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使用细粒度交互数据预测网络搜索成功
检测和预测搜索成功对于自动评估和改进Web搜索引擎性能至关重要。过去,Web搜索者行为数据(如结果点击、停留时间和查询重新表述序列)已被成功地用于各种任务,包括预测搜索会话的成功。然而,以前的方法的有效性是有限的,因为它们往往忽略了搜索者实际上是如何查看和与所访问的页面进行交互的。我们展示了细粒度的交互,如鼠标光标移动和滚动,为更好地预测整个搜索会话的成功提供了额外的线索。为此,我们确定了与搜索成功相对应的检查和交互行为模式,并设计了一个新的细粒度会话行为(FSB)模型来捕获这些模式。我们的实验结果表明,FSB比不使用这些额外相互作用数据的最先进的方法显着更有效。
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