Difference between revisions of "Manuals/calci/KRUSKALWALLISTEST"

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*[http://en.wikipedia.org/wiki/Kruskal%E2%80%93Wallis_one-way_analysis_of_variance Kruskal-Wallis test documentation on Wikipedia]
 
*[http://en.wikipedia.org/wiki/Kruskal%E2%80%93Wallis_one-way_analysis_of_variance Kruskal-Wallis test documentation on Wikipedia]
 
*[http://www.stat.vcu.edu/help/SPSS/SPSS.KruskalWallis.PC.pdf Kruskal-Wallis test in SPSS]
 
*[http://www.stat.vcu.edu/help/SPSS/SPSS.KruskalWallis.PC.pdf Kruskal-Wallis test in SPSS]
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*[[Z_API_Functions | List of Main Z Functions]]
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*[[ Z3 |  Z3 home ]]

Revision as of 02:29, 13 March 2017

KRUSKALWALLISTEST(Array,Confidencelevel,Logicalvalue)


  • is the set of values to find the test statistic.
  • is the value between 0 and 1.
  • is either TRUE or FALSE.

Description

  • This function gives the test statistic value of the Kruskal Wallis test.
  • It is one type of Non parametric test.
  • It is a logical extension of the Wilcoxon-Mann-Whitney Test.
  • The parametric equivalent of the Kruskal-Wallis test is the one-way analysis of variance (ANOVA).
  • This test is used for comparing more than two sample that are independent or not related.
  • It is used to test the null hypothesis that all populations have identical distribution functions against the alternative hypothesis that at least two of the samples differ only with respect to Median.
  • Kruskal–Wallis is also used when the examined groups are of unequal size.
  • When the Kruskal-Wallis test leads to significant results, then at least one of the samples is different from the other samples.
  • The test does not identify where the differences occur or how many differences actually occur.
  • Since it is a non-parametric method, the Kruskal–Wallis test does not assume a normal distribution of the residuals, unlike the analogous one-way analysis of variance.
  • However, the test does assume an identically shaped and scaled distribution for each group, except for any difference in medians.
  • The Kruskal Wallis test data are having the following properties:
  • 1.The data points must be independent from each other.
  • 2.The distributions do not have to be normal and the variances do not have to be equal.
  • 3.The data points must be more than five per sample.
  • 4.All individuals must be selected at random from the population.
  • 5.All individuals must have equal chance of being selected.
  • 6.Sample sizes should be as equal as possible but some differences are allowed.
  • Steps for Kruskal Wallis Test:
    • 1. Define Null and Alternative Hypotheses:
  • Null Hypotheses:There is no difference between the conditions.
  • Alternative Hypotheses:There is a difference between the conditions.
    • 2.State Alpha:Alpha=0.05.
    • 3.Calculate degrees of freedom:df = k – 1, where k = number of groups.
    • 4.State Decision Rule:From the Chi squared table calculate the critical value.
  • Suppose the is greater than the critical value then reject the null hypothesis
    • 5.Calculate the Test Statistic:
    • 6.State Results:In this step we have to take a decision of null hypothesis either accept or reject depending on the critical value table.
    • 7.State Conclusion:To be significant, our obtained H has to be equal to or LESS than this critical value.

Example

Raw Scores
Method1 Method2 Method3
94 82 89
87 85 68
90 79 72
74 84 76
86 61 69
97 72 65
0 80 0


  1. =LEVENESTEST(B1:C5,.05,0)


KRUSKAL WALLIS TEST Ranking
Method1 Method2 Method3
18 11 16
15 13 3
17 9 5.5
7 12 8
14 1 4
19 5.5 2
10
TEST RESULTS
Method1 Method2 Method3
Sum of Ranks 90 61.5 38.5
Group Size 6 7 6
R^2/n 1350 540.3214285714286 247.04166666666666
TotalRankSum 190
Total Group Size 19
Total R^2/n 2137.363095238095
H 7.495676691729315
df 2
p-value 0.023568638074462633
a 0.05

Related Videos

Kruskal Wallis Test

See Also

References