Media coverage has a substantial effect on the public perception of events. Nevertheless, media outlets are often biased. One way to bias news articles is by altering the word choice. The automatic identification of bias by word choice is challenging, primarily due to the lack of a gold standard data set and high context dependencies. This paper presents BABE, a robust and diverse data set created by trained experts, for media bias research. We also analyze why expert labeling is essential within this domain. Our data set offers better annotation quality and higher inter-annotator agreement than existing work. It consists of 3,700 sentences balanced among topics and outlets, containing media bias labels on the word and sentence level. Based on our data, we also introduce a way to detect bias-inducing sentences in news articles automatically. Our best performing BERT-based model is pre-trained on a larger corpus consisting of distant labels. Fine-tuning and evaluating the model on our proposed supervised data set, we achieve a macro F1-score of 0.804, outperforming existing methods.
翻译:媒体对事件的公众认识有很大影响。然而,媒体渠道往往有偏见。偏见新闻文章的一个途径是改变字词选择。自动识别字词选择偏见具有挑战性,主要原因是缺少金标准数据集和高度环境依赖性。本文展示了由训练有素的专家为媒体偏见研究而创建的强有力和多样化的BABE数据集。我们还分析了为什么专家标签在这一领域至关重要。我们的数据集提供了比现有工作更好的说明质量和更高的通知间协议。它由3 700个在主题和单位之间平衡的句子组成,包含字词和句级别的媒体偏见标签。根据我们的数据,我们还引入了一种自动检测新闻文章中带有偏见的句子的方法。我们最佳的BERT模型在由远程标签组成的更大系列上进行了预先培训。对我们拟议监管数据集的模型进行微调和评估,我们实现了0.804的宏观F1核心,优于现有方法。