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One-Way ANOVA

Pairwise Comparisons and Familywise Error . ?fw is the alpha familywise, the conditional probability of making one or more Type I errors in a family of c comparisons.?pc is the alpha per comparison, the criterion used on each individual comparison.Bonferroni: ?fw ? c?pc . Multiple t tests. We coul

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One-Way ANOVA

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    1. One-Way ANOVA Multiple Comparisons

    2. Pairwise Comparisons and Familywise Error ?fw is the alpha familywise, the conditional probability of making one or more Type I errors in a family of c comparisons. ?pc is the alpha per comparison, the criterion used on each individual comparison. Bonferroni: ?fw ? c?pc

    3. Multiple t tests We could just compare each group mean with each other group mean. For our 4-group ANOVA (Methods A, B, C, and D) that give c = 6 comparisons AB, AC, AD, BC, BD, and CD. Suppose that we decided to use the .01 criterion of significant for each comparison

    4. c = 6, ?pc = .01 alpha familywise might be as high as 6(.01) = .06. What can we do to lower familywise error?

    5. Fishers Procedure Also called the Protected Test or Fishers LSD. Do ANOVA first. If ANOVA not significant, stop. If ANOVA is significant, make pairwise comparisons with t. For k = 3, this will hold familywise error at the nominal level, but not with k > 3.

    6. Computing t Assuming homogeneity of variance, use the pooled error term from the ANOVA: For A versus D:

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