谁说的?:基于文本的电视新闻内容自动分析

Carlos Castillo, G. D. F. Morales, Marcelo Mendoza, Nasir Khan
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引用次数: 8

摘要

我们对电视新闻节目进行自动分析,基于它们附带的封闭字幕。具体来说,我们收集了美国140多个电视频道在6个月内播出的所有新闻。我们从自动分割、处理和注释闭标题开始。接下来,我们将重点分析他们的语言风格和提到使用NLP方法的人。我们提出了一系列关于新闻提供者、新闻人物的关键见解,并讨论了可以通过自动手段发现的偏见。通过从多个角度(包括定性评估)查看数据,对比这些见解。
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Says who?: automatic text-based content analysis of television news
We perform an automatic analysis of television news programs, based on the closed captions that accompany them. Specifically, we collect all the news broadcasted in over 140 television channels in the US during a period of six months. We start by segmenting, processing, and annotating the closed captions automatically. Next, we focus on the analysis of their linguistic style and on mentions of people using NLP methods. We present a series of key insights about news providers, people in the news, and we discuss the biases that can be uncovered by automatic means. These insights are contrasted by looking at the data from multiple points of view, including qualitative assessment.
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