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A Relativistic Opinion Mining Approach to Detect Factual or Opinionated News Sources

机译:一种相对论的观点挖掘方法,用于检测事实或有观点的新闻来源

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The credibility of news cannot be isolated from that of its source. Further, it is mainly associated with a news source's trustworthiness and expertise. In an effort to measure the trustworthiness of a news source, the factor of "is factual or opinionated" must be considered among others. In this work, we propose an unsupervised probabilistic lexicon-based opinion mining approach to describe a news source as "being factual or opinionated". We get words' positive, negative, and objective scores from a sentiment lexicon and normalize these scores through the use of their cumulative distribution. The idea behind the use of such a statistical approach is inspired from the relativism that each word is evaluated with its difference from the average word. In order to test the effectiveness of the approach, three different news sources are chosen. They are editorials, New York Times articles, and Reuters articles, which differ in their characteristic of being opinionated. Thus, the experimental validation is done by the analysis of variance on these different groups of news. The results prove that our technique can distinguish the news articles from these groups with respect to "being factual or opinionated" in a statistically significant way.
机译:新闻的信誉不能与新闻的来源相分离。此外,它主要与新闻来源的可信度和专业知识有关。为了衡量新闻源的可信赖性,必须考虑“事实的或有观点的”因素。在这项工作中,我们提出了一种无监督的基于词典的概率观点挖掘方法,以将新闻源描述为“事实的或有观点的”。我们从情感词典中获得单词的正面,负面和客观得分,并通过使用它们的累积分布将这些得分归一化。使用这种统计方法背后的思想是受到相对主义启发的,即相对于平均单词的差异,每个单词都被评估。为了测试该方法的有效性,选择了三个不同的新闻来源。它们是社论,《纽约时报》的文章和《路透社》的文章,它们的特征不同。因此,通过对这些不同新闻组的方差分析来完成实验验证。结果证明,我们的技术可以以统计上有意义的方式将新闻文章从这些组中区分为“是事实的还是有观点的”。

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