Media has a substantial impact on the public perception of events. A one-sided or polarizing perspective on any topic is usually described as media bias. One of the ways how bias in news articles can be introduced is by altering word choice. Biased word choices are not always obvious, nor do they exhibit high context-dependency. Hence, detecting bias is often difficult. We propose a Transformer-based deep learning architecture trained via Multi-Task Learning using six bias-related data sets to tackle the media bias detection problem. Our best-performing implementation achieves a macro $F_{1}$ of 0.776, a performance boost of 3\% compared to our baseline, outperforming existing methods. Our results indicate Multi-Task Learning as a promising alternative to improve existing baseline models in identifying slanted reporting.
翻译:媒体对事件的公众认识有重大影响。关于任何议题的片面或两极化观点通常被描述为媒体偏见。新闻文章中偏见的出现方式之一是改变文字选择。错误的字选择并不总是显而易见,它们也不表现出高度的背景依赖性。因此,发现偏见往往很困难。我们建议采用六套与偏见有关的数据集,通过多任务学习培训一个基于变革的深层次学习架构,以解决媒体偏见探测问题。我们的最佳执行方式是拿出0.776美元,比我们基线增长3 ⁇,业绩超过现有方法。我们的结果显示,多任务学习是改进现有基线模式以识别倾斜报道的有希望的替代方法。