Linear hypotheses for parameters are expressed in matrix form as
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where is a matrix of coefficients for the linear hypotheses and is a vector of constants.
Suppose that and are the point and covariance matrix estimates, respectively, for a p-dimensional parameter from the imputed data set, i=1, 2, …, m. Then for a given matrix , the point and covariance matrix estimates for the linear functions in the imputed data set are, respectively,
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The inferences described in the section Combining Inferences from Imputed Data Sets and the section Multivariate Inferences are applied to these linear estimates for testing the null hypothesis .
For each TEST statement, the “Test Specification” table displays the matrix and the vector, the “Variance Information” table displays the between-imputation, within-imputation, and total variances for combining complete-data inferences, and the “Parameter Estimates” table displays a combined estimate and standard error for each linear component.
With the WCOV and BCOV options in the TEST statement, the procedure displays the within-imputation and between-imputation covariance matrices, respectively.
With the TCOV option, the procedure displays the total covariance matrix derived under the assumption that the population between-imputation and within-imputation covariance matrices are proportional to each other.
With the MULT option in the TEST statement, the “Multivariate Inference” table displays an F test for the null hypothesis of the linear components.