Modeling and visualizing geo-sensitive queries based on user clicks

Ziming Zhuang, Clifford Brunk, C. Lee Giles
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引用次数: 19

Abstract

The number of search queries that are associated with geographical locations, either explicitly or implicitly, has been quadrupled in recent years. For such geo-sensitive queries, the ability to accurately infer users' geographical preference greatly enhances their search experience. By mining past user clicks and constructing a geographical click probability distribution model, we address two important issues in spatial Web search: how do we determine whether a search query is geo-sensitive, and how do we detect, disambiguate, and visualize the associated geographical location(s). We present our empirical study on a large-scale dataset with about 9,000 unique queries randomly drawn from the logs of a popular commercial search engine Yahoo! Search, and about 430 million user clicks on 1.6M unique Web pages over an eight-month period. Our classification method achieved recall of 0.98 and precision of 0.75 in identifying geo-sensitive search queries. We also present our preliminary findings in using geographical click probability distributions to cluster search results for queries with geographical ambiguities.
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建模和可视化基于用户点击的地理敏感查询
近年来,与地理位置相关的搜索查询数量(无论是显式的还是隐式的)增加了四倍。对于这样的地理敏感查询,准确推断用户地理偏好的能力大大提高了他们的搜索体验。通过挖掘过去的用户点击并构建地理点击概率分布模型,我们解决了空间Web搜索中的两个重要问题:我们如何确定搜索查询是否具有地理敏感性,以及我们如何检测、消除歧义并可视化相关的地理位置。我们对一个大型数据集进行了实证研究,该数据集随机从一个流行的商业搜索引擎Yahoo!在8个月的时间里,大约有4.3亿用户点击了160万个独立网页。我们的分类方法在识别地理敏感搜索查询方面达到了0.98的召回率和0.75的精度。我们还介绍了我们在使用地理点击概率分布聚类搜索结果与地理歧义查询的初步发现。
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