Zusammenfassung der Ressource
Frage 1
Frage
I'm doing a three way ANOVA with a 3x3x2 design, what does this tell you?
Antworten
-
That this experiment has 2 IV's. Two of them have three levels
-
That this experiment has 3 levels. Two of them have 3 IV's and one has two
-
That this experiment has 3 IV's. Three of them have 3 levels
-
That this experiment has 3 IV's. Two of them has 3 levels and one has two.
Frage 2
Frage
What information do we get from a factorial ANOVA?
Antworten
-
We can see the main effects of each DV
-
We can see the main effects of each IV, and how they interact
-
We can see the main effects of each DV, and how they interact
-
We can see the main effects of each IV
Frage 3
Frage
Within the variability explained by SSm, how can we further split the variance in an independent measures factorial ANOVA?
Antworten
-
You cannot further split the variance explained by SSm
-
The variance explained by SSm is made up of only the SS for each variable
-
The variance explained by SSm is made up of the SS for each variable plus the SS for the interactions
-
The variance explained by SSm is made up of the MS for each variable plus the MS for the interactions
Frage 4
Frage
I have two factorial IV's: Age and gender. How do we look at the main effect of age?
Antworten
-
We average across all levels of gender and only look at the differences in age groups
-
We average across all levels of age and only look at the differences in age group
-
We average across all levels of age and only look at the different levels of gender groups
-
We average across all levels of gender and only look at the differences in gender
Frage 5
Frage
Following from the previous question, I have calculated SSage and SSgender. How do I calculate SSage*gender. What does this tell me?
Antworten
-
After calculating SSage and SSgender then the remaining variance accounted for by SSt is the variance from SSage*gender. This is the interaction between the two variables
-
After calculating SSage and SSgender then the remaining variance accounted for by SSm is the variance from SSage*gender. This is the main effect of the two variables
-
After calculating SSage and SSgender then the remaining variance accounted for by SSm is the variance from SSage*gender. This is the interaction between the two variables
-
You do not get SSage*gender in independent samples factorial ANOVA
Frage 6
Frage
What is an interaction?
Antworten
-
When both IV's have a main effect
-
When the effect of one DV on the IV is dependent on another DV
-
When the effect of one IV on the DV is dependent on another IV
-
When both DV's have a main effect
Frage 7
Frage
The following graph summarises the interaction effect of age and gender on colour perception test scores (DV). What does this interaction show?
Antworten
-
Colour perception improvement with age did not differ both boys and girls. For both genders, colour perception was better for 11 year olds compared to five year olds.
-
Colour perception improvement with age differed between boys and girls. For boys, no difference in colour perception was found between 5 year olds and 11 year olds. However, for girls there was an effect of age on colour perception.
-
Colour perception improvement with age did not differ both boys and girls across the ages. For both genders, colour perception was better for 5 year olds compared to 11 year olds.
-
Colour perception improvement with age differed between boys and girls. For girls, no differences in colour perception were found between 5 year olds and 11 year olds. However, for boys there was an effect of age on colour perception.
Frage 8
Frage
As my study is a factorial between subjects design, the relevant assumption I should be concerned about is _____________. If this assumption is met, I would expect to see that ___________.
Antworten
-
Homogeneity of variance; the Levene's test should not be significant.
-
Sphericity; the Mauchly's test should be significant.
-
Sphericity; the Mauchly's test should not be significant.
-
Homogeneity of variance; the Levene's test should be significant.
Frage 9
Frage
After completing our factorial ANOVA, why do we need to test the simple effects?
Antworten
-
Because we want to examine the differences between the IV's
-
To understand the effects of the individual variables
-
You don't need to do this as it shows the same as the main effects
-
Because this is the best way to explain an interaction, if the interaction exists.
Frage 10
Frage
Why can't we only interpret the F-value from the SSm (i.e. "Corrected Model) line of output?
Antworten
-
Because we don't just need to know how much variance is explained by the model, but whether each individual variable and their interactions is explaining a significant amount of the variance
-
Because we need to know how much variance is explained by the SSr output, which is part of the variance explained by SSm
-
Trick question - we only interpret the SSm line of output in factorial ANOVA
-
Because we don't just need to know how much variance is explained by the model, but whether each individual variable is explaining a significant amount of the variance