Help with Shapiro-Wilk Test interpretation.

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SUMMARY

The discussion focuses on the interpretation of the Shapiro-Wilk test for normality, specifically analyzing two data sets. For Set 1, with a Shapiro W value of 0.92 and a p-value of 0.171, the null hypothesis of normality cannot be rejected at a 5% significance level. Set 2, with a Shapiro W of 0.95 and a p-value of 0.502, similarly supports the null hypothesis. Participants emphasize that statistical tests do not confirm normality but rather assess the ability to reject the null hypothesis, recommending additional tests like the Jarque–Bera test and D'Agostino's K-squared test for further analysis.

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FrostScYthe
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Hi everyone,

I need to make sure that I'm interpreting the Shapiro WIlk test correctly. This is how I'm doing the interpretations:

Set 1
CI = 95%
n = 15
Shapiro W = .92
p = .171

I think this set is distributed normally because p is the probability that it is not normal, so the probability that it isn't normal is 17.1% right?

Set 2
CI = 95%
n = 15
Shapiro W = .95
p = .502

This set is slightly more probable to be not distributed normally because p is 50.2 %

Any help appreciated,

Ed.
 
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Since CI = 95% implies a critical "alpha" value of 5%, the null hypothesis of normality cannot be rejected for either set (at the 5% level of statistical significance).
 
But I can reject Set 1, if I chose an alpha like 20% right?
 
Correct.
 
Looking at this test more carefully. This test is more for testing whether a sample comes from a population that is not normally distributed.

I mean if the p > alpha then you can't reject the probability that it might be Normal (but it is just a probability, it doesn't tell you how probable is it that it is normal?). What is a good test to determine whether a distribution is Normal or not?
 
If p > alpha then you can't reject the NULL HYPOTHESIS that THE DISTRIBUTION IS Normal.

When testing a hypothesis you cannot ever accept the null hypothesis, you can either reject, or fail to reject. There is no statistical test that will tell you the distribution is normal; they can only tell whether you can or cannot reject normality. See http://www.keithbower.com/Miscellaneous/Don't 'Accept' H0.htm.

I suggest using tests based on skewness and/or kurtosis; two examples are the Jarque–Bera test and D'Agostino's K-squared test. If you don't need a formal test result, you can also make a Q-Q plot and decide visually.
 
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Thank EnumaElish for clarifying that for me :).
 

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