Probabilistic-Input, Noisy Conjunctive Models for Cognitive Diagnosis

Front Psychol. 2018 Jun 14:9:997. doi: 10.3389/fpsyg.2018.00997. eCollection 2018.

Abstract

Existing cognitive diagnosis models conceptualize attribute mastery status discretely as either mastery or non-mastery. This study proposes a different conceptualization of attribute mastery as a probabilistic concept, i.e., the probability of mastering a specific attribute for a person, and developing a probabilistic-input, noisy conjunctive (PINC) model, in which the probability of mastering an attribute for a person is a parameter to be estimated from data. And a higher-order version of the PINC model is used to consider the associations among attributes. The results of simulation studies revealed a good parameter recovery for the new models using the Bayesian method. The Examination for the Certificate of Proficiency in English (ECPE) data set was analyzed to illustrate the implications and applications of the proposed models. The results indicated that PINC models had better model-data fit, smaller item parameter estimates, and more refined estimates of attribute mastery.

Keywords: DINA model; PINC model; cognitive diagnosis; cognitive diagnosis models; higher-order model; probabilistic logic.