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Assessing the Fit of IRT Models in Language Testing

Assessing the Fit of IRT Models in Language Testing. Muhammad Naveed Khalid Ardeshir Geranpayeh. Outline. Item Response Theory (IRT) Importance of Model Fit within IRT Fit Procedures Issues and Limitations Lagrange Multiplier (LM) Test An empirical study using LM Fit statistics

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Assessing the Fit of IRT Models in Language Testing

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  1. Assessing the Fit of IRT Models in Language Testing Muhammad Naveed Khalid Ardeshir Geranpayeh

  2. Outline • Item Response Theory (IRT) • Importance of Model Fit within IRT • Fit Procedures • Issues and Limitations • Lagrange Multiplier (LM) Test • An empirical study using LM Fit statistics • Sharing Results • Conclusions

  3. Item Response Theory (IRT) • A family of mathematical models that provide a common framework for describing people and items • Examinee performance can be predicted in terms of the underlying trait • Provides a means for estimating abilities of people and characteristics of items

  4. IRT Models • Dichotomous or Discrete • 1 Parameter Logistic Model / Rasch (1PL) • 2 Parameter Logistic Model (2PL) • 3 Parameter Logistic Model (3PL) • Polytomous or Scalar • Partial Credit Model (PCM) • Generalized Partial Credit Model (GPCM) • Graded Response Model (GRM)

  5. Shape of Item Response Function

  6. Model for Item with 5 response categories Probability Response Category

  7. IRT Applications IRT applications in language testing are mainly used in • Test development • Item banking • Differential item functioning (DIF) • Computerized adaptive testing (CAT) • Test equating, linking and scaling • Standard setting The utility of the IRT model is dependent upon the extent to which the model accurately reflects the data

  8. Model Fit from Item Perspective Measurement Invariance (MI): Item responses can be described by the same parameters in all sub-populations. Item Characteristic Curve (ICC): Describes the relation between the latent variable and the observable responses to items. Local Independence (LI):Responses to different items are independent given the latent trait variable value. Uni-dimensionalty Speededness Global

  9. Consequences of Misfit Yen (2000) and Wainer & Thissen (2003) have shown the inadequacy of model-data fit Some of the adverse consequences are: • Biased ability estimates • Unfair ranks • Wrongly equated scores • Student misclassifications • Score precision • Validity

  10. Existing Item Fit Procedures Chi – Square Statistics Tests of the discrepancy between the observed and expected frequencies. Pearson-Type Item-Fit Indices (Yen, 1984; Bock, 1972). Likelihood Ratio Based Item-Fit Indices (McKinley & Mills, 1985).

  11. Issues in Existing Fit Procedures • The standard theory for chi-square statistics does not hold. • Failure to take into account the stochastic nature of the item parameter estimates. • Forming of subgroups for the test are based on model-dependent trait estimates. • There is an issue of the number of degrees of freedom. • It is sensitive to test length and sample size.

  12. Lagrange Multiplier (LM) Test Glas(1999) proposed the LM test to the evaluation of model fit. The LM tests are used for testing a restricted model against a more general alternative one. Consider a null hypothesis about a model with parameters This model is a special case of a general model with parameters

  13. LMItem Fit Statistics MI / DIF LI ICC Null Model Alternative Model Null Model Alternative Model Alternative Model Null Model

  14. Empirical Example • Data from Cambridge English First (FCE) • Reading 3 parts/30 questions • Listening 4 parts/30 questions • Sample size over 35000 • The approach can be applied to any other language exam

  15. Conclusions • LM statistics overcome existing FIT issues • Less computational intensive • Size of residuals in the form of Abs.Dif is highly valuable • Fit of IRT model holds reasonably (FCE) • Items violated - MI (4); ICC (3); LI (7) • Magnitude of violation is not severe

  16. Thank you! & Questions

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