| Literature DB >> 29881024 |
Chun Wang1, Zhan Shu2, Zhuoran Shang1, Gongjun Xu1.
Abstract
This research focuses on developing item-level fit checking procedures in the context of diagnostic classification models (DCMs), and more specifically for the "Deterministic Input; Noisy 'And' gate" (DINA) model. Although there is a growing body of literature discussing model fit checking methods for DCM, the item-level fit analysis is not adequately discussed in literature. This study intends to take an initiative to fill in this gap. Two approaches are proposed, one stems from classical goodness-of-fit test statistics coupled with the Expectation-Maximization algorithm for model estimation, and the other is the posterior predictive model checking (PPMC) method coupled with the Markov chain Monte Carlo estimation. For both approaches, the chi-square statistic and a power-divergence index are considered, along with Stone's method for considering uncertainty in latent attribute estimation. A simulation study with varying manipulated factors is carried out. Results show that both approaches are promising if Stone's method is imposed, but the classical goodness-of-fit approach has a much higher detection rate (i.e., proportion of misfit items that are correctly detected) than the PPMC method.Entities:
Keywords: DINA model; chi-square index; correct detection rate; false positive rate; posterior predictive model checking; power-divergence index
Year: 2015 PMID: 29881024 PMCID: PMC5978514 DOI: 10.1177/0146621615583050
Source DB: PubMed Journal: Appl Psychol Meas ISSN: 0146-6216