利用时间分解分析PubMed摘要

Rui Zhang, P. Chundi
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引用次数: 2

摘要

构造时间戳文档的时间分解是揭示文档集中包含的关键字和主题的时间关系和趋势的重要步骤。本文描述了使用时间分解从一小部分与Wnt信号通路相关的PubMed摘要中提取时间信息。构建文档集的时间分解,以识别在某个时间间隔内重要的关键字/主题等时间信息,并识别重要关键字的时间进展。基于熵和比值的概念,利用两种不同的度量函数为关键词赋值。它显示了文档集的最优有损分解如何在关键字数量以及平滑关键字的时间进展方面有效地降低噪声。构造了文档集的几个最优有损分解,并表明通过最优有损分解捕获的时间信息随着其大小(间隔数量)的增加而增加
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Using Time Decompositions to Analyze PubMed Abstracts
Constructing time decompositions of time stamped documents is an important step for uncovering temporal relationships and trends of keywords and topics contained in the document set. This paper describes the use of time decompositions to extract temporal information from a small set of PubMed abstracts related to the Wnt signaling pathway. A time decomposition of the document set is constructed to identify temporal information such as keywords/topics significant in some time interval and to also identify temporal progression of the significant keywords. Keywords were assigned temporal significance values using two different measure functions based on notions of entropy and ratio. It is shown how optimal lossy decompositions of the document set are effective in reducing noise both in terms of the number of keywords as well as in terms of smoothing out the temporal progressions of keywords. Several optimal lossy decompositions for the document set are constructed and it is shown that the temporal information captured by an optimal lossy decomposition increases as its size (number of intervals) increases
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