Title:
Quantifying the Beauty of Words : A Neurocognitive Poetics Perspective
Author(s):
Jacobs, Arthur M.
Year of publication:
2017
Available Date:
2018-01-11T10:10:42.764Z
Abstract:
In this paper I would like to pave the ground for future studies in
Computational Stylistics and (Neuro-)Cognitive Poetics by describing
procedures for predicting the subjective beauty of words. A set of eight
tentative word features is computed via Quantitative Narrative Analysis (QNA)
and a novel metric for quantifying word beauty, the aesthetic potential is
proposed. Application of machine learning algorithms fed with this QNA data
shows that a classifier of the decision tree family excellently learns to
split words into beautiful vs. ugly ones. The results shed light on surface
and semantic features theoretically relevant for affective-aesthetic processes
in literary reading and generate quantitative predictions for neuroaesthetic
studies of verbal materials.
Part of Identifier:
ISSN (print): 1662-5161
Keywords:
neurocognitive poetics
quantitative narrative analysis
machine learning
digital humanities
neuroaesthetics
computational stylistics
literary reading
decision trees
DDC-Classification:
006 Spezielle Computerverfahren
Publication Type:
Wissenschaftlicher Artikel
Also published in:
Frontiers in Human Neuroscience 12 (2018), Art. 12
URL of the Original Publication:
DOI of the Original Publication:
Department/institution:
Erziehungswissenschaft und Psychologie
Arbeitsbereich Allgemeine und Neurokognitive Psychologie
Funding ID:
Inst. Mitgliedschaft bei Frontiers
Comments:
Der Artikel wurde in einer Open-Access-Zeitschrift publiziert.