• Model comparison in cognitive modeling

    Subjects: Psychology >> Cognitive Psychology Subjects: Psychology >> Statistics in Psychology submitted time 2024-04-17

    Abstract: Cognitive modeling has gained widespread application in psychological research. Model comparison plays a crucial role in cognitive modeling, as researchers need to select the best model for subsequent analysis or latent variable inference. Model comparison involves considering not only the fit of the models to the data (balancing overfitting and underfitting) but also the complexity of the parameter data and mathematical forms. This article categorizes and introduces three major classes of model comparison metrics commonly used in cognitive modeling, including: goodness-of-fit metrics (such as mean squared error, coefficient of determination, and ROC curves), cross-validation-based metrics (such as AIC, DIC), and marginal likelihood-based metrics. The computation methods and pros and cons of each metric are discussed, along with practical implementations in R using data from the orthogonal Go/No-Go paradigm. Based on this foundation, the article identifies the suitable contexts for each metric and discusses new approaches such as model averaging in model comparison.