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Predicting Query Reformulation During Web Searching

机译:预测网页搜索过程中的查询重构

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This paper reports results from a study in which we automatically classified the query reformulation patterns for 964,780 Web searching sessions (composed of 1,523,072 queries) in order to predict what the next query reformulation would be. We employed an n-gram modeling approach to describe the probability of searchers transitioning from one query reformulation state to another and predict their next state. We developed first, second, third, and fourth order models and evaluated each model for accuracy of prediction. Findings show that Reformulation and Assistance account for approximately 45 percent of all query reformulations. Searchers seem to seek system searching assistant early in the session or after a content change. The results of our evaluations show that the first and second order models provided the best predictability, between 28 and 40 percent overall, and higher than 70 percent for some patterns. Implications are that the n-gram approach can be used for improving searching systems and searching assistance in real time.
机译:本文报告了一项研究的结果,我们将自动分类查询重构模式964,780 Web搜索会话(由1,523,072查询组成),以预测下一个查询重构是什么。我们采用了一种n-gram建模方法来描述从一个查询重构状态到另一个查询重构状态转换的搜索者的概率,并预测其下一个状态。我们开发了第一,第二,第三和第四级型号,并评估了每个模型以获得预测的准确性。调查结果表明,重新制定和援助占所有查询重新定制的约45%。搜索者似乎在会议早期或内容变更后寻找系统搜索助手。我们的评估结果表明,第一和二阶模型提供了最佳可预测性,总体上的预测性,28至40%,对于某些模式而言高于70%。含义是N-GRAM方法可用于改善搜索系统并实时搜索援助。

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