4.6 Article

An Insight to Estimated Item Response Matrix in Item Response Theory

期刊

IEEE ACCESS
卷 11, 期 -, 页码 82239-82247

出版社

IEEE-INST ELECTRICAL ELECTRONICS ENGINEERS INC
DOI: 10.1109/ACCESS.2023.3300375

关键词

Computer based testing; estimated item response matrix; Frobenius matrix norm; item response theory; low-rank matrix; matrix completion; maximum likelihood estimation; observed item response matrix; singular value decomposition

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This paper investigates the performance of item response theory based on distance criteria rather than likelihood criteria. A reconstructed item response matrix using maximum likelihood estimates is introduced, and the distance between the observed and estimated matrices is measured using the Frobenius matrix norm. The comparison of the distance between the observed and low-rank matrices helps evaluate the performance of the estimated item response matrix. The study finds that the predictive ability of item response theory is high enough when using test data, as the distance between the approximated low-rank matrix and observed item response matrix is approximately equal to or slightly less than the distance between the estimated item response matrix and observed item response matrix.
This paper investigates the performance of item response theory based on distance criteria rather than likelihood criteria. For this purpose, the estimated item response matrix is introduced. This matrix is a reconstruction of the item response matrix using maximum likelihood estimates of the parameters in item response theory. Then the distance between the observed and estimated matrices can be determined using the Frobenius matrix norm. An approximated low-rank matrix can be generated from the observed item response matrix by singular value decomposition, and the distance between the observed and low-rank matrices can be obtained in the same way. By comparing these two distances, we can evaluate the performance of the estimated item response matrix comparable to the performance of an approximated low-rank matrix. Applying this comparison to actual examination data, it is found that the rank of the approximated low-rank matrix that is equivalent to the estimated item response matrix is very low when using matrices as training data. However, using test data, the predictive ability of item response theory seems high enough since the minimum distance between the approximated low-rank matrix and the observed item response matrix is approximately equal to or slightly less than the distance between the estimated item response matrix and the observed item response matrix. This fact has been first discovered by utilizing the estimated item response matrix defined here.

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