Little's test of missing completely at random
In missing-data analysis, Little's test (1988, Journal of the American Statistical Association 83: 1198–1202) is useful for testing the assumption of missing completely at random for multivariate, partially observed quantitative data. I introduce the mcartest command, which implements Little's missing completely at random test and its extension for testing the covariate-dependent missingness. The command also includes an option to perform the likelihood-ratio test with adjustment for unequal variances. I illustrate the use of mcartest through an example and evaluate the finite-sample performance of these tests in simulation studies. Copyright 2013 by StataCorp LP.
Year of publication: |
2013
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Authors: | Li, Cheng |
Published in: |
Stata Journal. - StataCorp LP. - Vol. 13.2013, 4, p. 795-809
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Publisher: |
StataCorp LP |
Subject: | mcartest | CDM | MAR | MCAR | MNAR | chi-squared | missing data | missing-value patterns | multivariate | power |
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