By Geert Verbeke, Geert Molenberghs
This booklet offers a entire remedy of linear combined types for non-stop longitudinal information. subsequent to version formula, this version places significant emphasis on exploratory information research for all points of the version, equivalent to the marginal version, subject-specific profiles, and residual covariance constitution. additional, version diagnostics and lacking information obtain vast remedy. Sensitivity research for incomplete facts is given a in demand place.
Most analyses have been performed with the combined process of the SAS software program package deal, however the info analyses are awarded in a software-independent type.
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Subpopulation variables can be string or numeric but should be categorical. Assumptions. The cases in the data file represent a sample from a complex design that should be analyzed according to the specifications in the file selected in the Complex Samples Plan dialog box. Obtaining Complex Samples Crosstabs E From the menus choose: Analyze Complex Samples Crosstabs... E Select a plan file and, optionally, select a custom joint probabilities file. E Click Continue. 35 36 Chapter 7 Figure 7-1 Crosstabs dialog box E Select at least one row variable and one column variable.
Export Model as XML. Saves the parameter estimates and the parameter covariance matrix, if selected, in XML (PMML) format. SmartScore and the server version of SPSS (a separate product) can use this model file to apply the model information to other data files for scoring purposes. Complex Samples General Linear Model Options Figure 9-7 General Linear Model Options dialog box User-Missing Values. All design variables, as well as the dependent variable and any covariates, must have valid data. Cases with invalid data for any of these variables are deleted from the analysis.
Obtaining Complex Samples Ratios E From the menus choose: Analyze Complex Samples Ratios... E Select a plan file and, optionally, select a custom joint probabilities file. E Click Continue. 40 41 Complex Samples Ratios Figure 8-1 Ratios dialog box E Select at least one numerator variable and denominator variable. Optionally, you can: Specify variables to define subgroups for which statistics are produced. Complex Samples Ratios Statistics Figure 8-2 Ratios Statistics dialog box Statistics. This group produces statistics associated with the ratio estimate.