A maximum likelihood approach to test validation with missing and censored dependent variables |
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Authors: | Alan L. Gross |
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Affiliation: | (1) Department of educational psychology Graduate Center, City University of New York, USA |
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Abstract: | A maximum likelihood approach is described for estimating the validity of a test (x) as a predictor of a criterion variable (y) when there are both missing and censoredy scores present in the data set. The missing data are due to selection on a latent variable (ys) which may be conditionally related toy givenx. Thus, the missing data may not be missing random. The censoring process in due to the presence of a floor or ceiling effect. The maximum likelihood estimates are constructed using the EM algorithm. The entire analysis is demonstrated in terms of hypothetical data sets. |
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Keywords: | missing data censored data EM algorithm restriction of range |
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