News recommender systems (NRs) have been shown to shape public discourse and to enforce behaviors that have a critical, oftentimes detrimental effect on democracies. Earlier research on the impact of media bias has revealed their strong impact on opinions and preferences. Responsible NRs are supposed to have depolarizing capacities, once they go beyond accuracy measures. We performed sequence prediction by using the BERT4Rec algorithm to investigate the interplay of news of coverage and user behavior. Based on live data and training of a large data set from one news outlet "event bursts", "rally around the flag" effect and "filter bubbles" were investigated in our interdisciplinary approach between data science and psychology. Potentials for fair NRs that go beyond accuracy measures are outlined via training of the models with a large data set of articles, keywords, and user behavior. The development of the news coverage and user behavior of the COVID-19 pandemic from primarily medical to broader political content and debates was traced. Our study provides first insights for future development of responsible news recommendation that acknowledges user preferences while stimulating diversity and accountability instead of accuracy, only.
翻译:对媒体偏见的影响的早期研究揭示了它们对意见和偏好产生的强烈影响。负责任的NRC应该具有分化能力,一旦超出精确度的衡量范围。我们利用BERT4Rec算法进行了序列预测,以调查报道和用户行为等新闻的相互作用。根据现场数据以及从一个新闻渠道“事件暴发”、“在旗帜周围”效应和“过滤器泡沫”产生的大数据的培训,在数据科学与心理学之间的跨学科方法中进行了调查。公平NRC的潜力超过精确度计量,通过对大量文章、关键词和用户行为的模型进行培训来加以概括。对COVID-19大流行的新闻报道和用户行为从主要医学到更广泛的政治内容和辩论进行了跟踪。我们的研究为未来负责任的新闻建议的发展提供了初步的洞察力,即承认用户的偏好,同时激励多样性和问责制,而仅以准确性为目的。