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Summary - Multivariate data analyse (6462PS009Y)

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Summary of 6 pages for the course Multivariate data analyse at UL (Summary part 2)

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February 6, 2025
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2019/2020
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MULTIVARIATE DATA ANALYSIS

​ Analysis of covariance (ANCOVA)

The ANCOVA model; ANOVA + covariates
𝑌𝑖𝑗 = µ+ α𝑗 + 𝑏𝑤(𝐶𝑖𝑗 − 𝐶) + 𝑒𝑖𝑗
µ - the overall mean
α𝑗- the group effect of group j
𝑏𝑤 - the within-groups regression weight
𝐶𝑖𝑗- the covariate score of individual i in group j
𝐶- the mean value of the covariate

Is there a significant effect of the teaching method on posttest? (report test statistic, df, p
value, and effect size). If yes, interpret that effect using the estimated marginal means and
the post hoc tests?
2 2
Report​the η a.k.a. the 𝑅 seen in the bottom of the table, then report the F(corrected
model, error) ​ ​ ​ ​ ​ ​




Is there a significant correlation between pretest and posttest in all groups? ​
​ Look at the Within Group Correlations table​ ​ ​ ​




​ ​
Do you think that adding the covariate might lead to reduction of error, reduction of bias,
neither, or both? ​
​ Large and significant within-group correlations (correlation between the pretest and
the posttest) could lead to a possible reduction of error
Significant differences between group means could lead to a possible elimination of
bias​ ​




​ ​ ​
Check the assumptions of linearity and parallelism of the regression lines using the figures
and the ANOVA table with the Pretest * Method interaction. Is the ANCOVA model a
reasonable approximation of the data?
​ Linearity - look for a horizontal line in the standardized residuals

, Parallelism - regression lines between the covariate and the dependent variable
have the same regression weight bw in each group (bw = the within-groups
regression weight); it is assumed that there is no interaction between the factor and
the covariate → parallel regression lines
​ ​
If the interaction effect is non significant, there is no interaction between the factor
and the covariate; regression lines parallel in population




​ ​ ​
​ ​ ​ ​ ​ ​
Is the covariate significant? If yes, what is the value of the within-groups regression weight
for the covariate (bw)? Interpret this regression coefficient. ​
​ For bw; look at the Parameter Estimates table; under the pretest B value
To check whether the covariate is significant; look at the pretest value in the Tests of
Between-Subjects Effects table
If the pretest is significant; higher pretest scores are associated with higher posttest
scores





​ ​ ​ ​ ​ ​ ​

Calculating the adjusted means Yj .

*
​ 𝑌𝑗 = 𝑌𝑗 − bw (𝐶𝑗− 𝐶)​ ​
$3.59
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