Joint Maximum Likelihood Estimation for Diagnostic Classification Models

Psychometrika. 2016 Dec;81(4):1069-1092. doi: 10.1007/s11336-016-9534-9. Epub 2016 Oct 12.

Abstract

Joint maximum likelihood estimation (JMLE) is developed for diagnostic classification models (DCMs). JMLE has been barely used in Psychometrics because JMLE parameter estimators typically lack statistical consistency. The JMLE procedure presented here resolves the consistency issue by incorporating an external, statistically consistent estimator of examinees' proficiency class membership into the joint likelihood function, which subsequently allows for the construction of item parameter estimators that also have the consistency property. Consistency of the JMLE parameter estimators is established within the framework of general DCMs: The JMLE parameter estimators are derived for the Loglinear Cognitive Diagnosis Model (LCDM). Two consistency theorems are proven for the LCDM. Using the framework of general DCMs makes the results and proofs also applicable to DCMs that can be expressed as submodels of the LCDM. Simulation studies are reported for evaluating the performance of JMLE when used with tests of varying length and different numbers of attributes. As a practical application, JMLE is also used with "real world" educational data collected with a language proficiency test.

Keywords: cognitive diagnosis; joint maximum likelihood estimation; nonparametric classification; statistical consistency.

MeSH terms

  • Algorithms
  • Clinical Decision-Making
  • Computer Simulation
  • Data Interpretation, Statistical
  • Datasets as Topic
  • Humans
  • Language Tests
  • Likelihood Functions*
  • Linear Models
  • Psychometrics / methods*
  • Statistics, Nonparametric