The measure obtained from the Implicit Association Test (IAT; Greenwald et al., 1998. DOI: 10.1037/0022-3514.74.6.1464) is often used to predict people's behaviors. However, it has shown poor predictive ability potentially because of its typical scoring method (the D score), which is affected by the across-trial variability in the IAT data and might provide biased estimates of the construct. Linear Mixed-Effects Models (LMMs) can address this issue while providing a Rasch-like parametrization of accuracy and time responses. In this study, the predictive abilities of D scores and LMM estimates were compared. The LMMs estimates showed better predictive ability than the D score, and allowed for in-depth analyses at the stimulus level that helped in reducing the across -trial variability. Implications of the results and limitations of the study are discussed.

Epifania, M. O., Anselmi, P., Robusto, E., Filling the Gap Between Implicit Associations and Behavior: A Linear Mixed-Effects Rasch Analysis of the Implicit Association Test, <<METHODOLOGY>>, 2022; 18 (3): 185-202. [doi:10.5964/meth.7155] [https://hdl.handle.net/10807/231135]

Filling the Gap Between Implicit Associations and Behavior: A Linear Mixed-Effects Rasch Analysis of the Implicit Association Test

Epifania, Marina Ottavia
;
2022

Abstract

The measure obtained from the Implicit Association Test (IAT; Greenwald et al., 1998. DOI: 10.1037/0022-3514.74.6.1464) is often used to predict people's behaviors. However, it has shown poor predictive ability potentially because of its typical scoring method (the D score), which is affected by the across-trial variability in the IAT data and might provide biased estimates of the construct. Linear Mixed-Effects Models (LMMs) can address this issue while providing a Rasch-like parametrization of accuracy and time responses. In this study, the predictive abilities of D scores and LMM estimates were compared. The LMMs estimates showed better predictive ability than the D score, and allowed for in-depth analyses at the stimulus level that helped in reducing the across -trial variability. Implications of the results and limitations of the study are discussed.
2022
Inglese
Epifania, M. O., Anselmi, P., Robusto, E., Filling the Gap Between Implicit Associations and Behavior: A Linear Mixed-Effects Rasch Analysis of the Implicit Association Test, <<METHODOLOGY>>, 2022; 18 (3): 185-202. [doi:10.5964/meth.7155] [https://hdl.handle.net/10807/231135]
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/10807/231135
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