ANOVA Revision Flashcards
1
Q
INTRO
A
- t-tests only compare 2 groups; +2 = NOT a t-test
- may be a particular pattern unidentifiable unless we use (ie) ANOVA
2
Q
WHAT DO ANOVA DO?
A
- 2+ groups
- discover whether central tendencies (averages) are reliably different
- detect overall effect
- offers tools for making special-purpose comparisons/trends aka. polynomial tests
3
Q
POLYNOMIAL CONTRASTS
A
QUADRATIC TRENDS
- smile shape
CUBIC TRENDS
- rolling hill
QUARTIC TRENDS
- wave
LINEAR TRENDS
- positive straight line
4
Q
QUADRATIC TREND
A
- (ie. Does recall fall w/delay but then recover?)
- sig trend provides evidence that above statement = true
5
Q
CUBIC TRENDS
A
- (ie. Does recall fall with delay but only once a critical point is reached, and then drops to a given, minimum level?)
- significant trend provides evidence that above statement = true
6
Q
2-WAY ANOVA
A
- 2 groups/lvls/conditions
- allows to judge if STATSIG
- unpacks individual effects of 2+ separate IVs to analyse data from more complex designs
- can also investigate differential effects of 2+ IVs by exploring the interaction effect
- aka. tells us whether influence of one variable on scores = modulated by changes in others (aka. if there are INTERACTION EFFECTS)
7
Q
INTERACTION EFFECTS
A
- often not straightforward; usually “it depends”
- may be a big effect under some conditions (ie. driving at night) but not in others (ie. driving in daytime)
- ANOVA main strength = uses interactions to provide qualified answers to these questions
8
Q
INTERPRETING MAIN EFFECTS
A
(DRIVING EG)
TIME ME
- mean day perf = reliably dif from mean night perf
- aka distance affected by driving in day/night
WEATHER ME
- mean clear perf = reliably dif from mean foggy perf
- aka. distance affected by driving in foggy/clear
TIME x WEATHER INTERACTION
- day/night dif in clear = reliably dif from foggy
9
Q
PLANNED VS UNPLANNED CONTRASTS
A
- if group ME = reliable then there is dif somewhere (BUT where?)
- CONTRAST TESTS determine this (planned/A priori or unplanned/post-hoc/A posteriori)
10
Q
PLANNED CONTRASTS
A
- designed before experimenter sees data
- aka. stat tests thus far
11
Q
UNPLANNED CONTRASTS
A
- devised after experimenter sees data
- reduce Type 1 error likelihood via increasing crit value of test stat
- aka. prevent conclusion of false effects
- ie. Newman/Keuls; Duncan’s Multiple Range; Tukey’s; Dunnetts’s/Scheffe