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Discovering News Frames: Exploring Text, Content, and Concepts in Online News Sources to Address Water Insecurity in the Southwest Region

机译:发现新闻框架:探索在线新闻来源中的文字,内容和概念,以解决西南地区的水不安全问题

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The Internet is a major source of online news content. Current efforts to evaluate online news content, including text, story line and sources is limited by the use of small-scale manual techniques that are time consuming and dependent on human judgments. This article explores the use of machine learning algorithms and mathematical techniques for Internet-scale data mining and semantic discovery of news content that will enable researchers to mine, analyze and visualize large-scale datasets. This research has the potential to inform the integration and application of data mining to address real-world socio-environmental issues, including water insecurity in the Southwestern United States. This paper establishes a formal definition of framing and proposes an approach for the discovery of distinct patterns that characterize prominent frames. Our experimental evaluation shows that the proposed process is an effective and efficient semi-supervised machine learning method to inform data mining for inferring classification.
机译:互联网是在线新闻内容的主要来源。目前,评估在线新闻内容(包括文本,故事情节和来源)的努力受到使用小型手动技术的限制,这些技术耗时且依赖于人类的判断。本文探讨了将机器学习算法和数学技术用于Internet规模的数据挖掘和新闻内容的语义发现,这将使研究人员能够挖掘,分析和可视化大规模数据集。这项研究有可能为数据挖掘的集成和应用提供信息,以解决现实世界中的社会环境问题,包括美国西南部的水不安全问题。本文建立了框架的正式定义,并提出了一种发现特征突出的帧的独特模式的方法。我们的实验评估表明,所提出的过程是一种有效且高效的半监督机器学习方法,可为数据挖掘提供信息以进行分类。

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