In the contemporary media landscape, with the vast and diverse supply of news, it is increasingly challenging to study such an enormous amount of items without a standardized framework. Although attempts have been made to organize and compare news items on the basis of news values, news genres receive little attention, especially the genres in a news consumer's perception. Yet, perceived news genres serve as an essential component in exploring how news has developed, as well as a precondition for understanding media effects. We approach this concept by conceptualizing and operationalizing a non-discrete framework for mapping news items in terms of genre cues. As a starting point, we propose a preliminary set of dimensions consisting of "factuality" and "formality". To automatically analyze a large amount of news items, we deliver two computational models for predicting news sentences in terms of the said two dimensions. Such predictions could then be used for locating news items within our framework. This proposed approach that positions news items upon a multidimensional grid helps in deepening our insight into the evolving nature of news genres.
翻译:在当代媒体中,新闻种类繁多,种类繁多,因此,在没有标准化框架的情况下研究如此庞大的项目越来越具有挑战性。虽然有人试图根据新闻价值来组织和比较新闻项目,但新闻流却很少受到注意,特别是新闻消费者的看法中的种类。然而,人们所认为的新闻流是探索新闻如何发展的必不可少的组成部分,也是了解媒体影响的先决条件。我们通过构想和操作一个非分解的框架来看待这一概念,从主题提示的角度来绘制新闻项目。作为一个起点,我们提出一套初步的维度,包括“事实”和“形式”等。为了自动分析大量新闻项目,我们提供了两个计算模型,用上述两个方面预测新闻句子。然后,这些预测可用于在我们的框架中查找新闻项目。这个拟议方法将新闻项目放在一个多层面的网络上,有助于我们深入了解新闻流的演变性质。