Many people consider news articles to be a reliable source of information on current events. However, due to the range of factors influencing news agencies, such coverage may not always be impartial. Media bias, or slanted news coverage, can have a substantial impact on public perception of events, and, accordingly, can potentially alter the beliefs and views of the public. The main data gap in current research on media bias detection is a robust, representative, and diverse dataset containing annotations of biased words and sentences. In particular, existing datasets do not control for the individual background of annotators, which may affect their assessment and, thus, represents critical information for contextualizing their annotations. In this poster, we present a matrix-based methodology to crowdsource such data using a self-developed annotation platform. We also present MBIC (Media Bias Including Characteristics) - the first sample of 1,700 statements representing various media bias instances. The statements were reviewed by ten annotators each and contain labels for media bias identification both on the word and sentence level. MBIC is the first available dataset about media bias reporting detailed information on annotator characteristics and their individual background. The current dataset already significantly extends existing data in this domain providing unique and more reliable insights into the perception of bias. In future, we will further extend it both with respect to the number of articles and annotators per article.
翻译:许多人认为新闻文章是当前事件的可靠信息来源,然而,由于影响新闻机构的各种因素,这种报道可能并不总是不偏不倚的。媒体偏见或倾斜的新闻报道可能对公众对事件的看法产生重大影响,因此有可能改变公众的信仰和观点。目前媒体偏见检测研究中的主要数据差距是强有力、有代表性和多样的数据集,其中载有有偏见的言词和句子的说明。特别是,现有的数据集无法控制告发者的个人背景,这可能影响到他们的评估,从而代表了对其说明进行背景介绍的重要信息。在这个海报中,我们提出一种基于矩阵的方法,利用自我开发的记事平台将这类数据集中起来。我们还介绍了MBIC(MEBias Bias 包括特征) -- -- 代表各种媒体偏见事件的第一批1 700份声明样本。这些声明由10名注解者逐一审查,并载有媒体偏见识别单词和句层次的标签。MBIC是首次存在的关于媒体报道详细描述说明其特征及其个人背景的偏见的数据。我们首次用基于矩阵的矩阵方法来收集这类数据。我们现有的数据已经大大扩展了目前域内关于其独特性和更可靠见解的数据。