Week 12 Non-Parametric Tests Flashcards
1
Q
What are parametric tests?
A
T-test, ANOVA
- estimation of one or more parameters of the distribution of scores in the population
- rely on assumptions concerning the shape of the distribution
- usually include a normality assumption
2
Q
What are the assumptions of One-Way ANOVA?
A
- Independence
- Normality
- Homogeneity of Variance
3
Q
What are the assumptions of Within Subjects ANOVA
A
- Each subject each level
- Normally distributed treatment populations
- homogeneity of variance
- Interval scale of measurement
- Sphereicity assumed
- ID same for each S
4
Q
What are non-parametric tests?
A
- don’t rely on parameter estimation or distribution assumptions
- Major advantage since they do not rely on an restrictive assumptions concerning shape of sampled pop
- validity of test not affected by variable is normally distributed in population or not
5
Q
What is the disadvantage to non-parametric tests?
A
Lower power relative to corresponding parametric tests
6
Q
What are some non-parametric tests?
A
- Wilcoxon’s Rank-Sum Test (two independent samples)
- Mann-Whitney U test
- Wilcoxon’s Matched-Pairs Signed Ranks Test (related samples t test)
- Kruskal- Wallis One Way ANOVA (one way anova)
- Friedman’s Rank Test for k Correlated Samples (repeated measures ANOVA)
7
Q
What are analytic comparisons?
A
Statistical analysis of difference between means.
8
Q
What is a pairwise comparison?
A
Analysis of difference between two means
9
Q
What are complex comparisons?
A
Where a average of two or more groups means are compared with either a single group mean or average of two or more groups means.