Publication | Open Access
The Effects of Q-Matrix Design on Classification Accuracy in the Log-Linear Cognitive Diagnosis Model
59
Citations
18
References
2014
Year
NeuropsychologyGeneralizability TheoryDiagnosisItem Response TheoryEducationCognitionPsychometricsClassical Test TheoryDiagnostic Classification ModelsPsychologySocial SciencesCognitive TechnologyApplied MeasurementCognitive AnalysisPsychological EvaluationCognitive ComputingAutomated AssessmentLatent Variable MethodsReliabilityCognitive SciencePsychiatryClassification AccuracyTest DevelopmentDiagnostic CriterionEducational TestingEducational MeasurementDiagnostic Classification ModelQ-matrix DesignCognitive PerformanceCognitive ModelingDiagnostic FeedbackPsychological Measurement
Diagnostic classification models are psychometric models that aim to classify examinees according to their mastery or non-mastery of specified latent characteristics. These models are well-suited for providing diagnostic feedback on educational assessments because of their practical efficiency and increased reliability when compared with other multidimensional measurement models. A priori specifications of which latent characteristics or attributes are measured by each item are a core element of the diagnostic assessment design. This item–attribute alignment, expressed in a Q-matrix, precedes and supports any inference resulting from the application of the diagnostic classification model. This study investigates the effects of Q-matrix design on classification accuracy for the log-linear cognitive diagnosis model. Results indicate that classification accuracy, reliability, and convergence rates improve when the Q-matrix contains isolated information from each measured attribute.
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