Central Themes for ANCOVA spss
Central Themes for ANCOVA spss
Variance: in DV
The linear combination that is examined in ANCOVA is the Y score that is adjusted for the effects of the covariates
Covariance: between DV & Covariate(s)
in ANCOVA we can examine the proportion of shared variance (i.e., η2) between the adjusted Y score and the IV(s).
Ratio: Between Groups/ Within Groups
Just as with ANOVA, in ANCOVA we are very interested in the ratio of between-groups variance over within-groups variance.
The linear combination that is examined in ANCOVA is the Y score that is adjusted for the effects of the covariates
Covariance: between DV & Covariate(s)
in ANCOVA we can examine the proportion of shared variance (i.e., η2) between the adjusted Y score and the IV(s).
Ratio: Between Groups/ Within Groups
Just as with ANOVA, in ANCOVA we are very interested in the ratio of between-groups variance over within-groups variance.
Regression in GLM is simply a matter of entering the independent variables as covariates and, if there are sets of dummy variables (ex., Region, which would be translated into dummy variables in OLS regression, for ex., South = 1 or 0), the set variable (ex., Region) is entered as a fixed factor with no need for the researcher to create dummy variables manually. The b coefficients will be identical whether the regression model is run under ordinary regression (in SPSS, under Analyze, Regression, Linear) or under GLM (in SPSS, under Analyze, General Linear Model, Univariate). Where b coefficients are default output for regression in SPSS, in GLM the researcher must ask for "Parameter estimates" under the Options button. The R-square from the Regression procedure will equal the partial Eta squared from the GLM regression model.
The advantages of doing regression via the GLM procedure are that dummy variables are coded automatically, it is easy to add interaction terms, and it computes eta-squared (identical to R-squared when relationships are linear, but greater if nonlinear relationships are present). However, the SPSS regression procedure would still be preferred if the reseacher wishes output of standardized regression (beta) coefficients, wishes to do multicollinearity diagnostics, or wishes to do stepwise regression or to enter independent variables hierarchically, in blocks. PROC GLM in SAS has a greater range of options and outputs (SAS also has PROC ANOVA, but it handles only balanced designs/equal group sizes).
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