Skip to main content

Research Repository

Advanced Search

Response times and subjective complexity of food choices: A web-based experiment across 3 countries

Atzori, R.; Pellegrini, A.; Lombardi, G.; Scarpa, R.

Response times and subjective complexity of food choices: A web-based experiment across 3 countries Thumbnail


Authors

R. Atzori

A. Pellegrini

G. Lombardi



Abstract

Accurate collection of response times is one of the main advantages of web-administered stated choice experiments and it can be thought of as a behavioral indicator of cognitive effort. We use data from a food choice experiment administered across three countries and estimate a panel Mixed Multinomial Logit Model to obtain individual-specific utility weights. These are used to construct two utility-based measures of contextual choice complexity, which are combined with subjective measures of cognitive resources as well as indicators of opt-out selection. We first develop and then test hypothesized effects of complexity at the level of single choice task and choice sequence on response times. By using a log-linear random effects model with choice task response-time as dependent variable we isolate these effects from other background variables. Results suggest that as our measures of complexity increase so do response times and such effects are robust across the three countries. We argue that these results broadly support the validity of web-based choice surveys to measure food preference. We suggest that computers can help improve survey design by implementing algorithms to improve the overall efficiency of choice tasks design, for example by using adaptive design algorithms that control cognitive challenges in accordance with the respondent’s predicted ability to tackle cognitive effort.

Citation

Atzori, R., Pellegrini, A., Lombardi, G., & Scarpa, R. (2023). Response times and subjective complexity of food choices: A web-based experiment across 3 countries. Social Science Computer Review, 41(4), 1381–1404. https://doi.org/10.1177/08944393211073585

Journal Article Type Article
Acceptance Date Dec 26, 2021
Online Publication Date Mar 1, 2022
Publication Date 2023-08
Deposit Date Jan 27, 2022
Publicly Available Date Jan 27, 2022
Journal Social Science Computer Review
Print ISSN 0894-4393
Electronic ISSN 1552-8286
Publisher SAGE Publications
Peer Reviewed Peer Reviewed
Volume 41
Issue 4
Pages 1381–1404
DOI https://doi.org/10.1177/08944393211073585
Public URL https://durham-repository.worktribe.com/output/1216806

Files

Accepted Journal Article (721 Kb)
PDF

Copyright Statement
This contribution has been accepted for publication in Social Science Computer Review.





You might also like



Downloadable Citations