噪声鲁棒性检测网络上话题的出现和传播

Masahiro Inoue, Keishi Tajima
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引用次数: 3

摘要

由于相同的信息出现在许多Web页面上,我们经常想知道哪个页面是第一个讨论该信息的页面,或者随着时间的推移,该信息是如何在Web上传播的。在本文中,我们开发了两种方法:一种检测讨论给定信息的第一页的方法,以及一种生成图表的方法,该图表显示讨论该信息的页面数量如何沿着时间轴变化。为了提取这些信息,我们需要确定哪些页面讨论给定的主题,还需要确定这些页面是何时创建的。对于前一步,我们设计了一个度量来估计信息和页面之间的包含程度。对于后一步,我们开发了一种提取网页创建时间戳的技术。虽然时间戳提取是时间Web分析中的一个关键组件,但是没有研究详细说明如何完成它。然而,这两个步骤仍然容易出错。为了更好地消除噪声,我们不仅检查了每个页面的属性,还检查了页面之间的时间关系。如果某些候选页面和其他页面之间的时间关系在Web上传播的典型信息模式中不太可能存在,我们将候选页面作为噪声消除。实验结果表明,该方法具有较高的精度,可用于实际应用。
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Noise robust detection of the emergence and spread of topics on the web
As the same information appears on many Web pages, we often want to know which page is the first one that discussed it, or how the information has spread on the Web as time passes. In this paper, we develop two methods: a method of detecting the first page that discussed the given information, and a method of generating a graph showing how the number of pages discussing it has changed along the timeline. To extract such information, we need to determine which pages discuss the given topic, and also need to determine when these pages were created. For the former step, we design a metric for estimating inclusion degree between information and a page. For the latter step, we develop a technique of extracting creation timestamps on web pages. Although timestamp extraction is a crucial component in temporal Web analysis, no research has shown how to do it in detail. Both steps are, however, still error-prone. In order to improve noise elimination, we examine not only the properties of each page, but also temporal relationship between pages. If temporal relationship between some candidate page and other pages are unlikely in typical patterns of information spread on the Web, we eliminate the candidate page as a noise. Results of our experiments show that our methods achieve high precision and can be used for practical use.
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Analyzing patterns of information cascades based on users' influence and posting behaviors Identification of top relevant temporal expressions in documents Enriching temporal query understanding through date identification: how to tag implicit temporal queries? Noise robust detection of the emergence and spread of topics on the web Extraction of temporal facts and events from Wikipedia
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