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Between-Groups ANOVA Chapter 12. >When to use an F distribution Working with more than two samples >ANOVA Used with two or more nominal independent variables.

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Presentation on theme: "Between-Groups ANOVA Chapter 12. >When to use an F distribution Working with more than two samples >ANOVA Used with two or more nominal independent variables."— Presentation transcript:

1 Between-Groups ANOVA Chapter 12

2 >When to use an F distribution Working with more than two samples >ANOVA Used with two or more nominal independent variables and an interval dependent variable

3 >The problem of too many t tests Fishing for a finding Problem of Type I error Why not use multiple t-tests?

4 >Analyzing variability to compare means F = variance between groups variance within groups >That is, the difference among the sample means divided by the average of the sample variances The F Distribution

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6 Types of Variance >Between groups: estimate of the population variance based on differences among group means >Within groups: estimate of population variance based on differences within (3 or more) sample distributions

7 Check Your Learning >If between-groups variance is 8 and within-groups variance is 2, what would F be?

8 Types of ANOVA >One-Way: hypothesis test including one nominal variable with more than two levels and a scale DV >Within-Groups: more than two samples, with the same participants; also called repeated-measures >Between-Groups: more than two samples, with different participants in each sample

9 Assumptions of ANOVAs >Random selection of samples >Normally distributed sample >Homoscedasticity: samples come from populations with the same variance

10 One-Way Between-Groups ANOVA >Everything about ANOVA but the calculations >1. Identify the populations, distribution, and assumptions. >2. State the null and research hypotheses. >3. Determine the characteristics of the comparison distribution. >4. Determine the critical value, or cutoff. >5. Calculate the test statistic. >6. Make a decision.

11 Step 3. Characteristics What are the degrees of freedom? >If there are three levels of the independent variable? >If there are a total of 20 participants in each of the three levels?

12 >Step 4: Critical Values

13 Determine Cutoffs for an F Distribution (Step 4)

14 Formulae

15 >Quantifies overlap >Two ways to estimate population variance Between-groups variability Within-groups variability Logic behind the F Statistic

16 The Logic of ANOVA

17 >Presents important calculations and final results in a consistent, easy-to- read format The Source Table

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25 >What is the ANOVA telling us to do about the null hypothesis? >Do we reject or accept the null hypothesis? Bringing it All Together

26 An F Distribution Here the F statistic is 8.27 while the cutoff is 3.86. Do we reject the null hypothesis?

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28 Making a Decision >Step 1. Compare the variance (MS) by diving the sum squares by the degrees of freedom. >Step 2. Divide the between-groups MS by the within-groups MS value. >Step 3. Compare the calculated F to the critical F (in Appendix B). If calculated is bigger than critical, we have a significant difference between means

29 Calculating Effect Size >R 2 is a common measure of effect size for ANOVAs.

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31 Post-Hoc Tests to Determine Which Groups Are Different >When you have three groups, and F is significant, how do you know where the difference(s) are? Tukey HSD Bonferonni >A priori (planned) comparisons

32 Tukey HSD Test >Widely used post hoc test that uses means and standard error

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34 The Bonferroni Test >A post-hoc test that provides a more strict critical value for every comparison of means. >We use a smaller critical region to make it more difficult to reject the null hypothesis. Determine the number of comparisons we plan to make. >Divide the p level by the number of comparisons.

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