TY - JOUR
T1 - Killing Two Birds with One Stone
T2 - Accounting for Unfolding Item Response Process and Response Styles Using Unfolding Item Response Tree Models
AU - Li, Zhaojun
AU - Li, Lingyue
AU - Zhang, Bo
AU - Cao, Mengyang
AU - Tay, Louis
N1 - Publisher Copyright:
© 2024 Society of Multivariate Experimental Psychology.
PY - 2024
Y1 - 2024
N2 - Two research streams on responses to Likert-type items have been developing in parallel: (a) unfolding models and (b) individual response styles (RSs). To accurately understand Likert-type item responding, it is vital to parse unfolding responses from RSs. Therefore, we propose the Unfolding Item Response Tree (UIRTree) model. First, we conducted a Monte Carlo simulation study to examine the performance of the UIRTree model compared to three other models–Samejima’s Graded Response Model, Generalized Graded Unfolding Model, and Dominance Item Response Tree model, for Likert-type responses. Results showed that when data followed an unfolding response process and contained RSs, AIC was able to select the UIRTree model, while BIC was biased toward the DIRTree model in many conditions. In addition, model parameters in the UIRTree model could be accurately recovered under realistic conditions, and mis-specifying item response process or wrongly ignoring RSs was detrimental to the estimation of key parameters. Then, we used datasets from empirical studies to show that the UIRTree model could fit personality datasets well and produced more reasonable parameter estimates compared to competing models. A strong presence of RS(s) was also revealed by the UIRTree model. Finally, we provided examples with R code for UIRTree model estimation to facilitate the modeling of responses to Likert-type items in future studies.
AB - Two research streams on responses to Likert-type items have been developing in parallel: (a) unfolding models and (b) individual response styles (RSs). To accurately understand Likert-type item responding, it is vital to parse unfolding responses from RSs. Therefore, we propose the Unfolding Item Response Tree (UIRTree) model. First, we conducted a Monte Carlo simulation study to examine the performance of the UIRTree model compared to three other models–Samejima’s Graded Response Model, Generalized Graded Unfolding Model, and Dominance Item Response Tree model, for Likert-type responses. Results showed that when data followed an unfolding response process and contained RSs, AIC was able to select the UIRTree model, while BIC was biased toward the DIRTree model in many conditions. In addition, model parameters in the UIRTree model could be accurately recovered under realistic conditions, and mis-specifying item response process or wrongly ignoring RSs was detrimental to the estimation of key parameters. Then, we used datasets from empirical studies to show that the UIRTree model could fit personality datasets well and produced more reasonable parameter estimates compared to competing models. A strong presence of RS(s) was also revealed by the UIRTree model. Finally, we provided examples with R code for UIRTree model estimation to facilitate the modeling of responses to Likert-type items in future studies.
KW - generalized graded unfolding model
KW - response style
KW - UIRTree
KW - Unfolding response process
UR - http://www.scopus.com/inward/record.url?scp=85202926151&partnerID=8YFLogxK
UR - http://www.scopus.com/inward/citedby.url?scp=85202926151&partnerID=8YFLogxK
U2 - 10.1080/00273171.2024.2394607
DO - 10.1080/00273171.2024.2394607
M3 - Article
C2 - 39215711
AN - SCOPUS:85202926151
SN - 0027-3171
JO - Multivariate Behavioral Research
JF - Multivariate Behavioral Research
ER -