IRT 2 Flashcards

1
Q

assumptions of maximum likelihood (ML)

A
  1. unidimensionality
    > items only correlate because they measure the same single latent variable
  2. local independence
    > conditional on theta, all items are independent
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2
Q

joint ML

A

+ all parameters are estimated simultaneously

  • all/none items correct = infinite/-infinite theta
  • everybody/nobody has an item correct = infinite/-infinite b
  • undesirable asymptotic properties (can create an infinite number of parameters in large sample sizes)
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3
Q

conditional ML (eRm)

A

estimates easiness instead of difficulty

+ conditional on sum score, theta disappears, so you only have item parameters
(so does not assume a standard normal distribution for theta)

  • only applicable to rasch model
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4
Q

marginal ML (ltm)

A

+ applicable to all IRT models

  • assumes normal distribution of theta (mean = 0, sd = 1)
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5
Q

identification

A

marginal ML
- variance theta = 1
- mean theta = 0

conditional ML
- mean b = 0

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6
Q

model fit

A

unidimensionality
> eigenvalues

equal a parameters
> item rest/item test correlations

absence of guessing
1. test on basis of theta estimates
2. test on basis of sum scores
3. 3 parameter model

model predictions
> Pij - E(Pij)

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7
Q

model comparison - likelihood ratio test

conditions

A
  1. models have to be nested
  2. constraints cannot be boundary constraints
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8
Q

significant likelihood ratio test

A

if the LRT is significant, the most complex model fits best

> e.g., the constraints in the Rasch model deteriorate the likelihood

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