5.7 Take-Home Points
In analysis of variance, we test the null hypothesis that all groups have the same population means. Behind the scenes, we actually test the ratio of between-groups variance to within-groups variance.
The overall differences in average outcome scores between groups on one factor (independent variable) are a main effect in an analysis of variance.
The differences in average outcome scores between subgroups, that is, groups that combine a level on one factor (predictor) and a level on another factor (moderator), represent an interaction effect. Note that we are dealing with the differences between subgroup scores that remain after the main effects have been removed.
Moderation is the phenomenon that an effect is different in different contexts. The effect can be stronger or it can have a different direction. In analysis of variance, interaction effects represent moderation.
Eta-squared measures the size of a main or interaction effect in analysis of variance. It tells us the proportion of variance in the dependent variable that is accounted for by the effect.
A means plot is very helpful for interpreting and communicating results of an analysis of variance.
The F tests in analysis of variance do not tell us which groups have different average scores on the dependent variable. To this end, we use independent-samples t tests as post-hoc tests with a (Bonferroni) correction for capitalization on chance.
To apply analysis of variance, we need a numeric dependent variable that has equal population variance in each group of a factor or each subgroup in case of an interaction effect. However, equality of population variances is not important if all groups on a factor or all subgroups in an interaction are more or less of equal size (the largest count is at most 10% of the largest count larger than the smallest count.)