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PARAMETRIC VERSUS NONPARAMETRIC STATISTICS. Heibatollah Baghi, and Mastee Badii. Parametric Assumptions. Parametric Statistics involve hypothesis about population parameters (e.g., µ, ρ ).
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PARAMETRIC VERSUS NONPARAMETRIC STATISTICS Heibatollah Baghi, and Mastee Badii
Parametric Assumptions • Parametric Statistics involve hypothesis about population parameters (e.g., µ, ρ). • They require assumptions about the population distribution. For example, the assumptions for t test for independent samples are: • Each of the two populations of observations is normally distributed • The populations of observations are equally variable : that is σ2 = σ2. (Assumption of homogeneity of variance )
Nonparametric Alternative • The parametric assumptions cannot be justified: normal distribution, equal variances, etc. • The data as gathered are measured on nominal or ordinal data • Sample size is small.
Spearman Rank Correlation • The Spearman rank correlation is used when: • Distribution assumptions required by Pearson r are in question • Small sample size
Example • X: The student’s popularity measure • Y: The student’s average academic achievement • Research questions : Is popularity related to achievement ?
Test of Association Using Spearman Rank Correlation Because of doubts regarding the distributional assumptions coupled with small sample size, select the Spearman Rank Correlation to answer this question
Calculation of Spearman Rank Correlation Spearman rank correlation
Continued Calculation of Spearman Rank Correlation Difference between ranks
Continued Calculation of Spearman Rank Correlation Number of cases
Continued Calculation of Spearman Rank Correlation X: The student’s popularity measure Y: The student’s average academic achievement
Continued Calculation of Spearman Rank Correlation
Continued Calculation of Spearman Rank Correlation
Continued Calculation of Spearman Rank Correlation
Continued Calculation of Spearman Rank Correlation
Continued Calculation of Spearman Rank Correlation
Continued Calculation of Spearman Rank Correlation
Test of Significance • Calculated rRank= -0.26 • Critical value for alpha 0.05 for Spearman Rank Correlation with 8 subjects = 0.738 • Calculated rRanks is less than critical value • The relation between Popularity and academic achievement is not statistically significant
Continued When to Use Which Test
Continued When to Use Which Test
Take Home Lesson Spearman Rank Correlation can be used on ordinal data