Normality And Non Parametric Tests Flashcards
What is a z score
The number of standard deviations a data point is from the mean
Parametric tests
Normal distribution
Interval or ratio data
More powerful but more strings attached
Defined by ‘parameters’ - means and SD
Non parametric tests
Not normally distributed
Or data not interval or ratio
When is a Kolmogorov-smirnov test (K-S) test used
Normality test to see if scores differ significantly from normal distribution
P<.05 then scores sig different from normal
Sample of 50 +
When is a Shapiro-Wilk test used
Normality test
But has more power to detect differences
Sample <50
Skewness
Symmetry of distribution
Positive skew - scores clustered to left
Negative skew - scores cluster to right
Kurtosis
‘Peakedness’ of the distribution
Positive Kurtosis - peaked with long thin tails
Negative - relatively flat
Kurtosis and skewness values
If distribution was 0 the value of skewness and Kurtosis would be 0
The further from 0 the more likely the data’s not normally distributed
There is calculations you can do…
- Check histogram for evidence
- Divide skewness or Kurtosis value by standard error to produce Z score ( scores between - and + 1.96 suggest normal distribution)
- Larger sample sizes - important to check actual size rather than sig - less than +/- 1 little problem
More than - acknowledge
More than +/- 2 problematic
What do non parametric tests do
Check if scores are drawn from same population or not
Reporting Mann Whitney U test
Median, interquartile range and Z scores
Reporting a Wilcoxon signed rank test
Median, interquartile range, Z score, p-value