4: REPEATED MEASURES ONE-WAY ANOVA Flashcards
RM designs (one-way ANOVA): what contributes to variance
between IV:
- manipulation of IV (treatment effects)
- experimental error (random /constant)
RM designs: variance between IV levels due to individual differences is absent
within IV:
- experimental error (random error)
RM designs: we remove the variance due to individual differences from the variance within IV levels (still constitutes a part of variance just neither within/between)
t/F ratio (RM)
t/F = variance between IV levels / variance within IV levels (excluding individual diffs)
- between - includes variance ‘caused’ by our manipulation of the IV and error variance
- within - includes only error variance
F ratio : RM
F = variance between IV levels / ( variance within IV levels - individ diffs)
F = MSm/MSr
- F close to 0 - small variance (relative)
- F further from 0 - large variance (relative)
assumptions of repeated measures 1-way ANOVA
- normality: the distribution of difference scores under each IV level pair should be normally distributed
- sphericity (homogeneity of covariance): the variance in difference scores under each IV level pair should be reasonably equivalent (Mauchlys assesses this, greenhouse corrects for this)
- equivalent sample size: sample size under each level of the IV should be roughly equal
if data violates, non parametric - friedman test
Mauchly’s statistic
assesses sphericity (homogeneity of variances)
therefore, if P < (or equal) .05 we reject null hypothesis (i.e. heterogeneity)
SPSS:
- if Mauchly’s is not significant use sphericity assumed
- if Mauchly’s is significant use greenhouse-geisser
df for RM 1-way ANOVA
need to calculate df for our estimates of :
- between IV levels: DFm = k-1
- within IV levels: DFr = DFm x (n -1)
advantages of repeated measures designs
- recruitment: needs fewer participants to gain the same number of measurements
- error variance (within IV levels) is reduced (remove individual diff variance)
- more power with same number of participants (easier to find significant difference (avoid type 2 error, resulting F/t value is larger)
disadvantages of RM designs
order effects: practice effects, fatigue effects, sensitisaion, carry-over effects
- use counterbalancing
alternatives where counterbalancing not possible: practice, fatigue, sensitisaion, carry-over effects