ANCOVA Flashcards
1
Q
What are the key characteristics of the General Linear Model?
A
- The GLM has 2 key characteristics (doesn’t preclude testing that violates this though)
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Linearity; Variables are assumed to have linear relationships
- Can transform non-linear variables
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Additivity; effects of a set of variables on an outcome are assumed to be additive
- Can create interaction variables, use moderation
-
Linearity; Variables are assumed to have linear relationships
- ANOVA and Regression both use the GLM. ANOVA tends to be used when all predictors are categorical and the outcome is continuous
2
Q
What is ANCOVA?
A
-
ANCOVA is an extension of ANOVA that includes a co-variate (compares 2+ groups on an outcome while controlling for another variable)
- Difference between group means adjusted for covariate;
- ie the covariate score is subtracted from the group scores (
- Difference between group means adjusted for covariate;
-
Purposes:
- Reduces within group error
- Elimination of confounding variables
- Controlling for baseline when comparing follow ups
- Increases sensitivity by explaining some of the unexplained variance (reducing SSerror without changing SStotal)
3
Q
What is a co-variate?
A
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Covariate = any variable that is measureable and presumed to have a sig relationship on outcome
- Not part of the main experimental manipulation
- Must be chosen a-priori
-
Try to balance predictive power against model complexity
- Adding covariates loses degrees of freedom
- Number of covariates should be less than
- (10% sample size) - (number of groups - 1)
4
Q
What is the assumption of independence of the covariate?
A
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There should not be any overlap between the covariate and the treatment
- Covariates do not balance out differences between treatment groups on the covariate
- Check with t-test or ANOVA (no sig difs in covariate across IV) using IV as predictor for covariate
-
Often occurs when participants are not randomly assigned or the covariate levels differ across groups
- Likely to be an issue in quasi experimental designs
-
ANCOVA Controversey; Miller and Chapman found many researchers misapplied ANCOVA
- eg; Ie using anxiety as a covariate for depression
5
Q
What is the assumption of homogeneity of the regression slopes?
A
-
The assumption that the relationship between the outcome and the covariate is the same at all levels of the predictor
- ie the overall relationship is true for all groups of participants
-
Testing for homogeneity:
- Can be examined using a scatterplot and line of best fit
- Ideally, the lines should be parallel
- An interaction effect should be non-significant
- Can be examined using a scatterplot and line of best fit
- Note: sometimes this can be a hypothesis in itself and not necessarily bad
6
Q
How do you test ANCOVA assumptions in SPSS?
A
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Independence of the Covariate; Run an ANOVA
- Analyse -> GLM -> Univariate
- Use covariate as dependent, IV as predictor
- Look for a non-significant F value
-
Homogeneity of Regression Slopes; Run Custom ANOVA
- Can be conducted before or after main analysis
- Analyse -> GLM -> Univariate -> Custom Model
- Include interation term between covariate and IV
- Want a non significant interaction term
7
Q
How is ANCOVA output in SPSS interpreted?
A
- Descriptive Statistics Box; general unadjusted means
- Levene’s Test; Homogeneity of variance test (interpret with caution)
-
Test of Between Subjects Effects
- Check covariate significance
- Check predictor significance (adjusted for covariate)
-
Estimated Marginal Means
- Means of groups adjusted for covariate
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Parameter Estimates, Contrasts and Pairwise comparisons;
- Differences between adjusted means of groups against placebos
- Direct group comparisons and breakdowns
8
Q
How is effect size reported in ANCOVA?
A
- Effect size (Eta2) needs to be reported separately for each predictor/covariate
- Effect size is calculated based on the SSeffect/SStotal
-
A better method is to report Partial Eta2
- Proportion of variance explained uniquely by one variable
- ie proportion of variance not explained by the covariate
- Can also calculate effect size r from the t-statistics of the contrast