Detecting Scenes in Fiction: A new Segmentation Task

Albin Zehe, Leonard Konle, Lea Katharina Dümpelmann, Evelyn Gius, Andreas Hotho, Fotis Jannidis, Lucas Kaufmann, Markus Krug, Frank Puppe, Nils Reiter, Annekea Schreiber, Nathalie Wiedmer

Language Resources and Evaluation Long paper Paper

Zoom-3C: Apr 22, Zoom-3C: Apr 22 (07:00-08:00 UTC) [Join Zoom Meeting]
Gather-3D: Apr 23, Gather-3D: Apr 23 (13:00-15:00 UTC) [Join Gather Meeting]

You can open the pre-recorded video in separate windows.

Abstract: This paper introduces the novel task of scene segmentation on narrative texts and provides an annotated corpus, a discussion of the linguistic and narrative properties of the task and baseline experiments towards automatic solutions. A scene here is a segment of the text where time and discourse time are more or less equal, the narration focuses on one action and location and character constellations stay the same. The corpus we describe consists of German-language dime novels (550k tokens) that have been annotated in parallel, achieving an inter-annotator agreement of gamma = 0.7. Baseline experiments using BERT achieve an F1 score of 24%, showing that the task is very challenging. An automatic scene segmentation paves the way towards processing longer narrative texts like tales or novels by breaking them down into smaller, coherent and meaningful parts, which is an important stepping stone towards the reconstruction of plot in Computational Literary Studies but also can serve to improve tasks like coreference resolution.
NOTE: Video may display a random order of authors. Correct author list is at the top of this page.

Connected Papers in EACL2021

Similar Papers

SANDI: Story-and-Images Alignment
Sreyasi Nag Chowdhury, Simon Razniewski, Gerhard Weikum,
Content-based Models of Quotation
Ansel MacLaughlin, David Smith,
Modeling Coreference Relations in Visual Dialog
Mingxiao Li, Marie-Francine Moens,
Us vs. Them: A Dataset of Populist Attitudes, News Bias and Emotions
Pere-Lluís Huguet Cabot, David Abadi, Agneta Fischer, Ekaterina Shutova,