通过使用搜索者行为数据改进搜索结果摘要

Mikhail S. Ageev, Dmitry Lagun, Eugene Agichtein
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引用次数: 30

摘要

偏向于查询的搜索结果摘要,或“片段”,帮助用户确定结果是否与他们的信息需求相关,并且在帮助搜索者处理困难或模糊的搜索任务方面变得越来越重要。以前发布的片段生成算法主要基于选择与查询最相似的文档片段,而没有考虑到搜索者认为文档的哪些部分是有用的。我们提出了一种新的方法,通过合并点击后搜索者行为数据来改进结果摘要,例如鼠标光标移动和在结果文档上滚动。为了实现这一目标,我们开发了一种收集行为数据的方法,这些数据在搜索者意图、文档检查行为和相应的文档片段之间具有精确的关联。反过来,这允许我们将页面检查行为信号合并到一个新的行为偏差片段生成系统(BeBS)中。通过挖掘搜索者检查数据,BeBS推断出用户最感兴趣的文档片段,并将这些证据与基于文本的特征相结合,选择最有希望的片段包含在结果摘要中。我们广泛的实验和分析表明,与现有的最先进的方法相比,我们的方法提高了结果摘要的质量。我们相信这项工作为改进搜索结果的呈现开辟了一个新的方向,我们提供了本研究中使用的代码和搜索行为数据,以鼓励该领域的进一步研究。
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Improving search result summaries by using searcher behavior data
Query-biased search result summaries, or "snippets", help users decide whether a result is relevant for their information need, and have become increasingly important for helping searchers with difficult or ambiguous search tasks. Previously published snippet generation algorithms have been primarily based on selecting document fragments most similar to the query, which does not take into account which parts of the document the searchers actually found useful. We present a new approach to improving result summaries by incorporating post-click searcher behavior data, such as mouse cursor movements and scrolling over the result documents. To achieve this aim, we develop a method for collecting behavioral data with precise association between searcher intent, document examination behavior, and the corresponding document fragments. In turn, this allows us to incorporate page examination behavior signals into a novel Behavior-Biased Snippet generation system (BeBS). By mining searcher examination data, BeBS infers document fragments of most interest to users, and combines this evidence with text-based features to select the most promising fragments for inclusion in the result summary. Our extensive experiments and analysis demonstrate that our method improves the quality of result summaries compared to existing state-of-the-art methods. We believe that this work opens a new direction for improving search result presentation, and we make available the code and the search behavior data used in this study to encourage further research in this area.
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