MANOVA Flashcards
1
Q
What is MANOVA?
A
-
MANOVA is a multivariate technique used to analyse multiple DVs
- Creates a variate for each participant comprised of a combination of scores from DVs
- Can assess multiple DVs as well as combinations and interactions between DVs
-
When to use MANOVA
- Particularly useful when the target construct is complex (eg happiness)
- Best used when DVs are highly negatively correlated, or when DVs are moderately correlated in either direction
2
Q
What are the advantages of MANOVA?
A
- Controls for Type 1 Error (especially compared to multiple anovas)
- Considers the combined effects of multiple DVs (interactions etc)
- When #DV < 5, MANOVA has the same power as multiple ANOVAS
- Multivariate test statistics can be used to interpret results
- More DVs can result in a more robust model due to increased power and reduced error variance
3
Q
What are the disadvantages of MANOVA?
A
- Complex technique; issues with interpretation
-
Questionable ability to reduce Type 1 Error
- Could simply adjust significance levels
- Selection of DVs requires strong theoretical foundation
-
Generally less powerful than ANOVA
- Especially when assessing DVs independently
- Issues of redundancy when DVs are highly correlated
4
Q
What are Wilks Lamda and Pillai’s Trace?
A
-
Wilks’ Lamda (Λ); Measures amount of variance not accounted for by IVs.
- When 2+ variates; Λ = product of unexplained variances
- Most common, appropriate when no assumption violations
-
Pillai-Bartlett Trace (V); proportion of variance accounted for by IVs
- When 2+ variates; V = sum of explained variances
- Robust to assumption violations (but issues with homogeneity of variance and unequal sample sizes)
5
Q
What are Hotellings Trace and Roys Largest Root?
A
- Both are related to the eigenvalues of the matrix
-
Hotellings T2; Sum of the eigenvalues for each variate
- sum of explained variance divided by unexplained variance for each variate
-
Roy’s Largest Root; The eigenvalue for the first (largest) variate
- Proportion of explained variance to unexplained variance for 1st variant
- Powerful when there is only one variate and assumptions are met
6
Q
What is a matrix?
A
- A matrix is an array of numbers in columns and rows
- Dimensions are expressed numerically as #rows x #columns (eg 2x3)
- Square Matrix; when #rows = #columns
- Identity Matrix; square matrix with diagonal =1, others =0
- Values are referred to as components or elements
- Columns and rows are referred to as vectors
- Dimensions are expressed numerically as #rows x #columns (eg 2x3)
7
Q
What is the Sum of Squares and Cross Products Matrix?
A
- The SSCP Matrix is how the test statistic is calculated in MANOVA
- ‘On Diagonal’ : each cell represents Sum Squares for one DV
- ‘Off Diagonal’ : represents combined effects of DVs
- Hypothesis SSCP; Effect variance matrix
- Error SSCP; Error variance matrix
- Total SSCP; Total vairance matrix
- Test Statistic; compares ratio of systematic variance to unsystematic variance for multiple DVs through Partitioning of Variances
- Divides H SSCP by E SSCP (multiply by inverse)
- Output requires interpretation via test statistics
8
Q
What is Discriminant Function Analysis?
A
- DFA is conducted as a follow up to a significant MANOVA analysis. It allows assessment of how the DVs discriminate the groups.
- The group variables are predicted by a linear combination of the outcome variables (like logistic regression)
- essentially the inverse of the MANOVA
- DFA produces multiple functions (or variates) which each represent a different linear combination of the DVs
9
Q
What assumptions are required for MANOVA?
A
-
Homogeneity of covariance matrices;
- Variances for each DV are roughly equal AND
- The correlation between any two DVs is similar in all groups
- Tested using Box’s M (p < .001 result = violation). Don’t bother when sample sizes are equal, notoriously oversensitive.
-
Multivariate Normality: Are DVs and linear combinations of DVs normally distributed?
- Can be assumed if cell size > 30
- No direct test, use judgment and combinations of other tests
- Multicollinearity/singularity: Correlations higher thatn .90
10
Q
How do you interpret results of DFA?
A
-
Eigenvalue Tables; Shows number of functions that can be extracted (will be lesser of #groups-1 or #predictors).
- In order of variance explained.
-
Wilks Lambda; Contribution of functions to group separation (1st is combination).
- When reporting consider all functions together.
- Canonical DF Coefficients; Provides regression coefficients for formula of each function
-
Structure Matrix; Values indicate how well and in what direction each predictor correlates with each function.
- Loading > .3 used in interpretation
-
Group Centroids; Shows which groups are differentiated best by that function
- Group with value of opposite sign best discriminated