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Quantitative Psychology Brownbag with Inhan Kang

In Neon Lights, the words "Coming Soon"
Mon, November 15, 2021
12:30 pm - 1:30 pm
Psychology 35

Inhan Kang
Department of Psychology
The Ohio State University

Title: Modeling Conditional Dependence of Response Accuracy and Response Time with the Diffusion Item Response Theory Model

Abstract: In this talk, we propose a model-based method to study conditional dependence between response accuracy and response time (RT) with the diffusion IRT model. We extend the earlier diffusion IRT model by introducing variability across persons and items in cognitive capacity (drift rate in the evidence accumulation process) and variability in the starting point of the decision processes. We show that the extended model can explain the behavioral patterns of conditional dependency found in the previous studies in psychometrics. Variability in cognitive capacity can predict positive and negative conditional dependency and their interaction with the item difficulty. Variability in starting point can account for the early changes in the response accuracy as a function of RT given the person and item effects. By the combination of the two variability components, the extended model can produce the curvilinear conditional accuracy functions that have been observed in psychometric data. We also provide a simulation study to validate the parameter recovery of the proposed model and present two empirical applications to show how to implement the model to study conditional dependency underlying data response accuracy and RTs.

Discussant: Yiyang Chen