| Literature DB >> 33828746 |
Shuwei Xue1, Jana Lüdtke1, Teresa Sylvester1, Arthur M Jacobs.
Abstract
As a part of a larger interdisciplinary project on Shakespeare sonnets' reception (1, 2), the present study analyzed the eye movement behavior of participants reading three of the 154 sonnets as a function of seven lexical features extracted via Quantitative Narrative Analysis (QNA). Using a machine learning-based predictive modeling approach five 'surface' features (word length, orthographic neighborhood density, word frequency, orthographic dissimilarity and sonority score) were detected as important predictors of total reading time and fixation probability in poetry reading. The fact that one phonological feature, i.e., sonority score, also played a role is in line with current theorizing on poetry reading. Our approach opens new ways for future eye movement research on reading poetic texts and other complex literary materials(3).Entities:
Keywords: Literary reading; QNA; eye movements; eye tracking; predictive modeling
Year: 2019 PMID: 33828746 PMCID: PMC7968390 DOI: 10.16910/jemr.12.5.2
Source DB: PubMed Journal: J Eye Mov Res ISSN: 1995-8692 Impact factor: 0.957