Modeling Readers' Appreciation of Literary Narratives Through Sentiment Arcs and Semantic Profiles
Pascale Moreira, Yuri Bizzoni, Kristoffer Nielbo, Ida Marie Lassen, Mads Thomsen
The 5th Workshop on Narrative Understanding N/a Paper
TLDR:
Predicting literary quality and reader appreciation of narrative texts are highly complex challenges in quantitative and computational literary studies due to the fluid definitions of quality and the vast feature space that can be considered when modeling a literary work. This paper investigates the
You can open the
#paper-wnu2023_11
channel in a separate window.
Abstract:
Predicting literary quality and reader appreciation of narrative texts are highly complex challenges in quantitative and computational literary studies due to the fluid definitions of quality and the vast feature space that can be considered when modeling a literary work. This paper investigates the potential of sentiment arcs combined with topical-semantic profiling of literary narratives as indicators for their literary quality. Our experiments focus on a large corpus of 19th and 20the century English language literary fiction, using GoodReads' ratings as an imperfect approximation of the diverse range of reader evaluations and preferences. By leveraging a stacked ensemble of regression models, we achieve a promising performance in predicting average readers' scores, indicating the potential of our approach in modeling literary quality.