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Collaborative Language Models for Localized Query Prediction

机译:用于本地化查询预测的协作语言模型

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摘要

Localized query prediction (LQP) is the task of estimating web query trends for a specific location. This problem subsumes many interesting personalized web applications such as personalization for buzz query detection, for query expansion, and for query recommendation. These personalized applications can greatly enhance user interaction with web search engines by providing more customized information discovered from user input (i.e., queries), but the LQP task has rarely been investigated in the literature. Although exist abundant work on estimating global web search trends does exist, it often encounters the big challenge of data sparsity when personalization comes into play. In this article, we tackle the LQP task by proposing a series of collaborative language models (CLMs). CLMs alleviate the data sparsity issue by collaboratively collecting queries and trend information from the other locations. The traditional statistical language models assume a fixed background language model, which loses the taste of personalization. In contrast, CLMs are personalized language models with flexible background language models customized to various locations. The most sophisticated CLM enables the collaboration to adapt to specific query topics, which further advances the personalization level. An extensive set of experiments have been conducted on a large-scale web query log to demonstrate the effectiveness of the proposed models.
机译:本地化查询预测(LQP)是为特定位置估算Web查询趋势的任务。此问题包含许多有趣的个性化Web应用程序,例如用于嗡嗡声查询检测,查询扩展和查询推荐的个性化。这些个性化应用程序通过提供从用户输入(即查询)中发现的更多自定义信息,可以极大地增强用户与Web搜索引擎的交互,但是LQP任务在文献中很少进行研究。尽管确实存在估计全球Web搜索趋势的大量工作,但是当个性化发挥作用时,它经常会遇到数据稀疏的巨大挑战。在本文中,我们通过提出一系列协作语言模型(CLM)解决LQP任务。 CLM通过协作收集其他位置的查询和趋势信息来缓解数据稀疏性问题。传统的统计语言模型采用固定的背景语言模型,这会失去个性化的味道。相反,CLM是个性化的语言模型,具有针对各个位置定制的灵活的背景语言模型。最复杂的CLM使协作能够适应特定的查询主题,从而进一步提高了个性化级别。已在大型网络查询日志上进行了广泛的实验,以证明所提出模型的有效性。

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