Adaptive testing under a multidimensional logistic response model is addressed. An algorithm is proposed that minimizes the (asymptotic) variance of the maximum-likelihood estimator of a linear combination of abilities of interest. The criterion results in a closed-form expression that is easy to evaluate. In addition, it is shown how the algorithm can be modified if the interest is in a test with a "simple ability structure". The statistical properties of the adaptive ML estimator are demonstrated for a two-dimensional item pool with several linear combinations of the abilities
Taylor approximation can be used to generate a linear approximation to a logistic ICC and a linear a...
The case of adaptive testing under a multidimensional response model with large numbers of constrain...
The case of adaptive testing under a multidimensional response model with large numbers of constrain...
The case of adaptive testing under a multidimensional logistic response model is addressed. An adapt...
The case of adaptive testing under a multidimensional logistic response model is addressed. An adapt...
Maximum likelihood and Bayesian procedures for item selection and scoring of multidi-mensional adapt...
Several criteria from the optimal design literature are examined for use with item selection in mult...
Several criteria from the optimal design literature are examined for use with item selection in mult...
A classification method is presented for adaptive classification testing with a multidimensional ite...
A classification method is presented for adaptive classification testing with a multidimensional ite...
This paper discusses four item selection rules to design efficient individualized tests for the rand...
It is unrealistic to suppose that standard item response theory (IRT) models will be appropriate for...
This article discusses four-item selection rules to design efficient individualized tests for the ra...
adaptive testing, Fisher information matrix, multidimensional IRT, optimal design,
Taylor approximation can be used to generate a linear approximation to a logistic ICC and a linear a...
Taylor approximation can be used to generate a linear approximation to a logistic ICC and a linear a...
The case of adaptive testing under a multidimensional response model with large numbers of constrain...
The case of adaptive testing under a multidimensional response model with large numbers of constrain...
The case of adaptive testing under a multidimensional logistic response model is addressed. An adapt...
The case of adaptive testing under a multidimensional logistic response model is addressed. An adapt...
Maximum likelihood and Bayesian procedures for item selection and scoring of multidi-mensional adapt...
Several criteria from the optimal design literature are examined for use with item selection in mult...
Several criteria from the optimal design literature are examined for use with item selection in mult...
A classification method is presented for adaptive classification testing with a multidimensional ite...
A classification method is presented for adaptive classification testing with a multidimensional ite...
This paper discusses four item selection rules to design efficient individualized tests for the rand...
It is unrealistic to suppose that standard item response theory (IRT) models will be appropriate for...
This article discusses four-item selection rules to design efficient individualized tests for the ra...
adaptive testing, Fisher information matrix, multidimensional IRT, optimal design,
Taylor approximation can be used to generate a linear approximation to a logistic ICC and a linear a...
Taylor approximation can be used to generate a linear approximation to a logistic ICC and a linear a...
The case of adaptive testing under a multidimensional response model with large numbers of constrain...
The case of adaptive testing under a multidimensional response model with large numbers of constrain...