Week Six Flashcards
why use more than two groups?
- if there are more than 2 groups of interest + a control
- including 3 or more groups can allow de-confounding
- looking for nature of relationships
relationships
- linear
- curved
- quadratic
levels of IV
○ Determined by type of relationship
○ Linear needs at least 3 points
- How far apart should the levels be?
○ Proportionately across spectrum
○ Allows for clear examination of levels of IV
§ Only applies to IVs that are based on measurement, rather than categories.
analysing multiple groups design
- ineffective to use t tests when we have more than 3 conditions.
- using multiple t tests would result in massive type 1 error.
analysis of variance
ANOVA
- We can no longer look at the difference between means as there is more than 2 groups
F ratio is needed
f ratio
- F ratio can also be used in 2 groups
- The larger the f ratio the more likely it is to be significant.
- Will be larger when the numerator is larger.
ANOVA and variability
- A well designed experiment with a single IV there will only be 2 sources of variability in the data
○ Variability due to the effects of manipulating the IV
○ Variability due to sampling error.- ANOVA isolates these sources of variability to see is sampling error can account for any apparent differences in scores between groups.
- ANOVA does this by looking at the ratio of the variability between groups compared with the variability within groups.
between groups variability
- Need to calculate the variance between group means.
- Calculate this variance by looking at how group means vary around the grand mean.
- Find the variance of groups means around the grand mean.
within groups variability
- Need to calculate variance within groups
- Calculate variance for each group separately
○ Variance of individual scores around their group means.
- Calculate variance for each group separately
calculation of variability and ANOVA
- The WG variability is calculated from various between groups scores of participants treated alike
- The BG variance is calculated from variations in the mean scores between levels of the IV.
- The WG variability and BG variability are potentially due to difference caused
○ WG variability must be due to sampling error
○ BG variability may be due to both
§ The effect of the IV and sampling error.
hypothesis testing and F
Ho= all groups means are the same and the IV has no effect. H1= at least one group mean is different and thus the IV has an effect.
Ho true
if the null hypothesis is true then
BG vari= sampling error (E)
WG V = sampling error (E).
BG/WG=E/E=1
H1 true
BG V= error + treatment effect
WG = error
BG/WG= E+ treatment/E= >1.
means square
same as variance in SPSS.
sample variance (descriptive)
= sum (X-M)^2/n