A Bayesian approach to dynamical modeling of eye-movement control in reading of normal, mirrored, and scrambled texts

Autor: Rabe, Maximilian, Chandra, Johan, Krügel, André, Seelig, Stefan, Vasishth, Shravan, Engbert, Ralf
Rok vydání: 2021
Předmět:
Department Psychologie
PsyArXiv|Social and Behavioral Sciences|Perception|Vision
Eye Movements
Computer science
media_common.quotation_subject
PsyArXiv|Social and Behavioral Sciences|Quantitative Methods|Mathematical Psychology
Bayesian probability
bepress|Social and Behavioral Sciences|Psychology|Cognition and Perception
bepress|Social and Behavioral Sciences|Psychology|Quantitative Psychology
computer.software_genre
050105 experimental psychology
bepress|Life Sciences|Neuroscience and Neurobiology
PsyArXiv|Social and Behavioral Sciences|Linguistics|Psycholinguistics and Neurolinguistics
ddc:150
Reading (process)
Statistical inference
Department Linguistik
Humans
0501 psychology and cognitive sciences
bepress|Social and Behavioral Sciences|Linguistics|Psycholinguistics and Neurolinguistics
bepress|Life Sciences|Neuroscience and Neurobiology|Cognitive Neuroscience
Control (linguistics)
bepress|Social and Behavioral Sciences|Linguistics
General Psychology
media_common
Language
Probability
PsyArXiv|Social and Behavioral Sciences|Perception
business.industry
05 social sciences
PsyArXiv|Social and Behavioral Sciences|Quantitative Methods|Computational Modeling
Eye movement
Experimental data
Bayes Theorem
Fixation (psychology)
bepress|Social and Behavioral Sciences|Psychology|Cognitive Psychology
PsyArXiv|Neuroscience|Cognitive Neuroscience
PsyArXiv|Social and Behavioral Sciences
PsyArXiv|Neuroscience
Reading
bepress|Social and Behavioral Sciences
PsyArXiv|Social and Behavioral Sciences|Cognitive Psychology
PsyArXiv|Social and Behavioral Sciences|Quantitative Methods
Artificial intelligence
business
computer
Row
PsyArXiv|Social and Behavioral Sciences|Linguistics
Natural language processing
Zdroj: Psychological review. 128(5)
ISSN: 1939-1471
Popis: In eye-movement control during reading, advanced process-oriented models have been developed to reproduce behavioral data. So far, model complexity and large numbers of model parameters prevented rigorous statistical inference and modeling of interindividual differences. Here we propose a Bayesian approach to both problems for one representative computational model of sentence reading (SWIFT; Engbert et al., Psychological Review, 112, 2005, pp. 777-813). We used experimental data from 36 subjects who read the text in a normal and one of four manipulated text layouts (e.g., mirrored and scrambled letters). The SWIFT model was fitted to subjects and experimental conditions individually to investigate between-subject variability. Based on posterior distributions of model parameters, fixation probabilities and durations are reliably recovered from simulated data and reproduced for withheld empirical data, at both the experimental condition and subject levels. A subsequent statistical analysis of model parameters across reading conditions generates model-driven explanations for observable effects between conditions. (PsycInfo Database Record (c) 2021 APA, all rights reserved).
Databáze: OpenAIRE