The labour-intensive nature of manual content analysis and the problematic accessibility of source material make quantitative analyses of news content still scarce in journalism history. However, the digitization of newspaper archives now allows for innovative digital methods for systematic longitudinal research beyond the scope of incidental case studies. We argue that supervised machine learning offers promising approaches to analyse abundant source material, ground analyses in big data, and map the structural transformation of journalistic discourse longitudinally. By automatically analysing form and style conventions, that reflect underlying professional norms and practices, the structure of news coverage can be studied more closely. Ho...
When analyzing digital journalism content, journalism scholars are confronted with a number of subst...
Abstract of paper 0774 presented at the Digital Humanities Conference 2019 (DH2019), Utrecht , the N...
Amid the push for self-driving cars and the roboticization of industrial economies, automation has p...
The labour-intensive nature of manual content analysis and the problematic accessibility of source m...
The labour-intensive nature of manual content analysis and the problematic accessibility of source m...
With the growing abundance of unlabeled data in real-world tasks, researchers have to rely on the pr...
Systematic study of genre in newspapers sheds light on the development of journalism discourse. The ...
With the growing abundance of unlabeled data in real-world tasks, researchers have to rely on the pr...
With the growing abundance of unlabeled data in real-world tasks, researchers have to rely on the pr...
In recent years, scholars have explored the applicability of supervised machine learning (SML) withi...
When analyzing digital journalism content, journalism scholars are confronted with a number of subst...
Abstract of paper 0774 presented at the Digital Humanities Conference 2019 (DH2019), Utrecht , the N...
Amid the push for self-driving cars and the roboticization of industrial economies, automation has p...
The labour-intensive nature of manual content analysis and the problematic accessibility of source m...
The labour-intensive nature of manual content analysis and the problematic accessibility of source m...
With the growing abundance of unlabeled data in real-world tasks, researchers have to rely on the pr...
Systematic study of genre in newspapers sheds light on the development of journalism discourse. The ...
With the growing abundance of unlabeled data in real-world tasks, researchers have to rely on the pr...
With the growing abundance of unlabeled data in real-world tasks, researchers have to rely on the pr...
In recent years, scholars have explored the applicability of supervised machine learning (SML) withi...
When analyzing digital journalism content, journalism scholars are confronted with a number of subst...
Abstract of paper 0774 presented at the Digital Humanities Conference 2019 (DH2019), Utrecht , the N...
Amid the push for self-driving cars and the roboticization of industrial economies, automation has p...