基于线性回归的查询日志相关查询挖掘

Haijun Zhai, Jin Zhang, Xiaolei Wang, Gang Zhang
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引用次数: 3

摘要

本文提出了一种新的线性回归模型,用于从查询日志中挖掘相关查询。我们的模型识别并利用了查询之间的三种关联关系,包括查询会话共现、url点击共享和文本相似度。以前的工作直接应用了这些关系的一部分,这可能在很大程度上受到查询日志中的噪声的影响,例如点击数据的稀疏性、查询会话分割错误和噪声点击。在这项工作中,我们提出线性回归分析来识别有效特征。这样,我们就可以有效地处理噪音问题。实验表明,用线性回归分析识别特征是非常有效的。此外,我们提出的线性回归模型的性能优于现有的方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Mining Related Queries from Query Logs Based on Linear Regression
In this paper a novel linear regression model is proposed to mine related queries from query logs. Three types of association relationships between queries are identified and leveraged in our model, which include query session co-occurence, URL-clicked sharing and text similarity. Previous work directly applies part of these relations, which may be largely affected by the noise in query logs, such as the sparsity of click-through data, query-session segmentation errors and noisy clicks. In this work we propose linear regression analysis to identify effective features. In this way, we can effectively deal with the noise issue. The experiments demonstrate that the features identified with linear regression analysis are very effective. Moreover, the performance of our proposed linear regression model outperforms existing methods.
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