个性化政治新闻报道的意识形态检测:一个新的数据集

Khudran Alzhrani
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引用次数: 2

摘要

词汇选择、写作风格、故事挑选以及许多其他因素在构建新闻文章以适应目标受众或与作者的信念保持一致方面发挥着作用。因此,仅仅报道事实并不能证明新闻是无偏见的。自2016年美国总统大选以来,研究人员一直关注媒体对选举结果的影响。新闻媒体的注意力已经从政党转移到了候选人身上。新闻媒体通过新闻个性化塑造公众对政治候选人的看法。尽管其至关重要,但我们还没有发现任何从机器学习或深度神经网络角度研究新闻个性化的研究。此外,一些候选人指责媒体偏袒,这危及他们赢得选举的机会。人们采用多种方法将新闻来源置于政治光谱的一边或另一边,但主流媒体声称自己是公正的。因此,为了避免不准确的假设,本研究只包括明确表示其政治派别的新闻来源。在本文中,我们根据新闻网站的政治立场,从关于前两位美国总统的新闻文章中构建了两个数据集。开发了多个智能模型来自动预测个性化未见文章的政治派别。这些模型的主要目的是检测个性化新闻文章的政治意识形态。虽然新构建的数据集高度不平衡,但智能模型的性能相当好。报告了智能模型的结果,并进行了对比分析。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Ideology Detection of Personalized Political News Coverage: A New Dataset
Words selection, writing style, stories cherry-picking, and many other factors play a role in framing news articles to fit the targeted audience or to align with the authors' beliefs. Hence, reporting facts alone is not evidence of bias-free journalism. Since the 2016 United States presidential elections, researchers focused on the media influence on the results of the elections. The news media attention has deviated from political parties to candidates. The news media shapes public perception of political candidates through news personalization. Despite its criticality, we are not aware of any studies which have examined news personalization from the machine learning or deep neural network perspective. In addition, some candidates accuse the media of favoritism which jeopardizes their chances of winning elections. Multiple methods were introduced to place news sources on one side of the political spectrum or the other, yet the mainstream media claims to be unbiased. Therefore, to avoid inaccurate assumptions, only news sources that have stated clearly their political affiliation are included in this research. In this paper, we constructed two datasets out of news articles written about the last two U.S. presidents with respect to news websites' political affiliation. Multiple intelligent models were developed to automatically predict the political affiliation of the personalized unseen article. The main objective of these models is to detect the political ideology of personalized news articles. Although the newly constructed datasets are highly imbalanced, the performance of the intelligent models is reasonably good. The results of the intelligent models are reported with a comparative analysis.
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