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picture1_Anova Ppt 69131 | 102s113 Cs15l01


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File: Anova Ppt 69131 | 102s113 Cs15l01
learning objectives learn advantages and disadvantages of nonparametric st atistics nonparametric tests testing randomness of a single sample run test testing difference two independent samples mann whitney wilcoxon rank sum ...

icon picture PPTX Filetype Power Point PPTX | Posted on 29 Aug 2022 | 3 years ago
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              Learning Objectives
       Learn advantages and disadvantages of nonparametric st
         atistics.
       Nonparametric tests:
           Testing randomness of a single sample: Run test
           Testing difference
               Two independent samples: Mann-Whitney-Wilcoxon Rank 
                 Sum  test
                    Two-sample z/t test
               Two dependent samples. Wilcoxon signed rank test
                    Paired sample t test
               >2 independent samples. Kruskal-Wallis test
                    One-way ANOVA
               >2 samples with blocking: Friedman test
                    RCBD
           Correlation: Spearman’s rank correlation coefficient
                                                                                 2
                                        Introduction
            Assumption for t-test or correlation 
               (regression) coefficients
                 Normality 
                 Equal variance
                 Independence 
            Not all data satisfy these assumpti
               ons!
            08/29/2022                  Copyright by Jen-pei Liu, PhD                          3
          Parametric  v.s. Nonparametri
          c statistics
       Parametric statistics mainly are based on assumptions 
        about the population
          Ex. X has normal population for t-test, or ANOVA.
          Requires interval or ratio level data.
       Nonparametric statistics depend on fewer assumptions 
        about the population and parameters. 
          “distribution-free” statistics.
          Most analysis are based on rank.
          Valid for ordinal data.
                                                                4
         Advantages and Disadvantag
         es 
         of Nonparametric Techniques
          Advantages 
             There is no parametric alternative
             Nominal data or ordinal data are analyzed
             Less complicated computations for small sampl
              e size
             Exact method. Not approximation.
          Disadvantages
             Less powerful if parametric tests are available.
             Not widely available and less well know
             For large samples, calculations can be tedious.
                                                               5
         Wilcoxon Signed-rank Test
      Example:
      十十十十十十十十十十十Pimax十十十十十110 cm H O
                                                   2
        Ho十十  十   110   vs.  Ha十 十  < 110
         n=9
         No power to verify the normality assumption 
                
       08/29/2022      Copyright by Jen-pei Liu, PhD   6
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...Learning objectives learn advantages and disadvantages of nonparametric st atistics tests testing randomness a single sample run test difference two independent samples mann whitney wilcoxon rank sum z t dependent signed paired kruskal wallis one way anova with blocking friedman rcbd correlation spearman s coefficient introduction assumption for or regression coefficients normality equal variance independence not all data satisfy these assumpti ons copyright by jen pei liu phd parametric v nonparametri c statistics mainly are based on assumptions about the population ex x has normal requires interval ratio level depend fewer parameters distribution free most analysis valid ordinal disadvantag es techniques there is no alternative nominal analyzed less complicated computations small sampl e size exact method approximation powerful if available widely well know large calculations can be tedious example pimax cm h o ho vs ha n power to verify...

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