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A Statistical Approach to the Discovery of Ephemeral Associations among News Topics

机译:新闻主题中发现短信协会的统计方法

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News reports are an important source of information about society. Their analysis allows understanding its current interests and measuring the social importance and influence of different events. In this paper, we use the analysis of news as a means to explore the society interests. We focus on the study of a very common phenomenon of news: the influence of the peak news topics on other current news topics. We propose a simple, statistical text mining method to analyze such influences. We differentiate between the observable associations―those discovered from the newspapers―and the real-world associations, and propose a technique in which the real ones can be inferred from the observable ones. We illustrate the method with some results obtained from preliminary experiments and argue that the discovery of the ephemeral associations can be translated into knowledge about interests of society and social behavior.
机译:新闻报道是社会信息的重要来源。他们的分析允许理解其当前的兴趣和衡量不同事件的社会重要性和影响。在本文中,我们使用对新闻的分析作为探索社会兴趣的手段。我们专注于研究一个非常常见的新闻现象:高峰新闻主题对其他当前新闻主题的影响。我们提出了一种简单的统计文本挖掘方法来分析这种影响。我们区分了从报纸和现实世界关联中发现的可观察协会的协会,并提出了一种技术,其中可以从可观察者推断出真实的协会。我们说明了从初步实验中获得的一些结果的方法,并争辩说短暂关联的发现可以转化为关于社会兴趣和社会行为的知识。

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