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Leveraging Temporal Query-Term Dependency for Time-Aware Information Access

机译:利用时间查询项依赖性进行时间感知的信息访问

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摘要

Incorporating the temporal property of queries into time-aware information access methods has been shown to have a significant positive effect on a large number of search tasks, such as over microblogs and news archive. Recent work on time-aware search mostly rely on time-based relevance models that are built upon the language model framework. However, in this model, query terms are often assumed to be generated independently from each other. In this paper, we observe through a time series analysis that, query terms are temporally dependent and are frequently occurring within similar time periods when they deal with the same topics. In contrast to existing work, we propose a method that naturally extends the effective temporal language model and exploits this dependency at the term granularity level. Moreover, we reframe the task as a rank aggregation problem that fully exploits the temporal features of query terms. Experiments using the large-scale TREC Temporal Summarization 2013 and 2014 standard datasets empirically show that our method leads to significant performance improvements, when compared to state-of-the-art temporal ranking models.
机译:将查询的时间属性整合到具有时间意识的信息访问方法中,已显示出对大量搜索任务(如微博和新闻档案)的显着积极影响。关于时间感知搜索的最新工作主要依赖于基于时间的相关性模型,该模型是基于语言模型框架构建的。但是,在此模型中,通常假设查询词是彼此独立生成的。在本文中,我们通过时间序列分析观察到,查询词在时间上是相关的,并且在处理相同主题时经常出现在相似的时间段内。与现有工作相反,我们提出了一种方法,该方法自然地扩展了有效的时态语言模型,并在术语粒度级别上利用了这种依赖性。此外,我们将任务重新构造为一个等级聚合问题,该问题充分利用了查询词的时间特征。使用大规模TREC时间摘要2013和2014标准数据集进行的实验从经验上表明,与最新的时间排名模型相比,我们的方法可显着提高性能。

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