The coverage of different stakeholders mentioned in the news articles significantly impacts the slant or polarity detection of the concerned news publishers. For instance, the pro-government media outlets would give more coverage to the government stakeholders to increase their accessibility to the news audiences. In contrast, the anti-government news agencies would focus more on the views of the opponent stakeholders to inform the readers about the shortcomings of government policies. In this paper, we address the problem of stakeholder extraction from news articles and thereby determine the inherent bias present in news reporting. Identifying potential stakeholders in multi-topic news scenarios is challenging because each news topic has different stakeholders. The research presented in this paper utilizes both contextual information and external knowledge to identify the topic-specific stakeholders from news articles. We also apply a sequential incremental clustering algorithm to group the entities with similar stakeholder types. We carried out all our experiments on news articles on four Indian government policies published by numerous national and international news agencies. We also further generalize our system, and the experimental results show that the proposed model can be extended to other news topics.
翻译:新闻文章中提到的不同利益攸关方的报道对相关新闻出版商的倾斜性或极分性探测产生了重大影响。例如,亲政府的媒体单位将更多地报道政府利益攸关方,以增加其对新闻受众的无障碍程度。反政府新闻机构则将更多关注反对派利益攸关方的观点,让读者了解政府政策的缺陷。在本文件中,我们处理利益攸关方从新闻报道中提取信息的问题,从而确定新闻报道中存在的内在偏见。在多专题新闻报道中确定潜在利益攸关方具有挑战性,因为每个新闻专题都有不同的利益攸关方。本文提出的研究利用背景信息和外部知识,确定新闻文章中的专题利益攸关方。我们还对具有类似利益攸关方类型的实体分组采用顺序递增组合算法。我们还对许多国家和国际新闻机构发表的关于印度政府四条政策的新闻文章进行了所有实验。我们还进一步普及了我们的系统,实验结果显示,拟议的模式可以扩展到其他新闻专题。