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A Graph-Learning Approach for Detecting Moral Conflict in Movie Scripts
[journal article]
Abstract Moral conflict is central to appealing narratives, but no methodology exists for computationally extracting moral conflict from narratives at scale. In this article, we present an approach combining tools from social network analysis and natural language processing with recent theoretical advancemen... view more
Moral conflict is central to appealing narratives, but no methodology exists for computationally extracting moral conflict from narratives at scale. In this article, we present an approach combining tools from social network analysis and natural language processing with recent theoretical advancements in the Model of Intuitive Morality and Exemplars. This approach considers narratives in terms of a network of dynamically evolving relationships between characters. We apply this method in order to analyze 894 movie scripts encompassing 82,195 scenes, showing that scenes containing moral conflict between central characters can be identified using changes in connectivity patterns between network modules. Furthermore, we derive computational models for standardizing moral conflict measurements. Our results suggest that this method can accurately extract moral conflict from a diverse collection of movie scripts. We provide a theoretical integration of our method into the larger milieu of storytelling and entertainment research, illuminating future research trajectories at the intersection of computational communication research and media psychology.... view less
Classification
Basic Research, General Concepts and History of the Science of Communication
Free Keywords
MIME; computational narratology; eMFD; entertainment; graph learning; moral conflict; movie scripts; network science
Document language
English
Publication Year
2020
Page/Pages
p. 164-179
Journal
Media and Communication, 8 (2020) 3
Issue topic
Computational Approaches to Media Entertainment Research
ISSN
2183-2439
Status
Published Version; peer reviewed