While you wait Page 636 Answer all the questions on Applying Concepts for section 12.1. your answers will have to be eventually turned in. You may later.

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While you wait: Make sure to have the data used with example 12-1 in your calculators. (ie medication vs exercise vs diet) Make sure to have your assignment.
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While you wait Page 636 Answer all the questions on Applying Concepts for section 12.1. your answers will have to be eventually turned in. You may later add your sec 12.2 homework on the same sheet of paper. _______________________________ Make sure to have the data used with example 12-1 in your calculators. (ie medication vs exercise vs diet) Bluman, Chapter 12

KATU Coverage of King School Bluman, Chapter 12

12-2 The Scheffé Test and the Tukey Test When the null hypothesis is rejected using the F test, the researcher may want to know where the difference among the means is. The Scheffé test and the Tukey test are procedures to determine where the significant differences in the means lie after the ANOVA procedure has been performed. Bluman, Chapter 12

The Scheffé Test In order to conduct the Scheffé test, one must compare the means two at a time, using all possible combinations of means. For example, if there are three means, the following comparisons must be done: Bluman, Chapter 12

Formula for the Scheffé Test where and are the means of the samples being compared, and are the respective sample sizes, and the within-group variance is . Bluman, Chapter 12

F Value for the Scheffé Test To find the critical value F for the Scheffé test, multiply the critical value for the F test by k  1: There is a significant difference between the two means being compared when Fs is greater than F. 𝐼`𝑓 𝐹 𝑠 > 𝐹 ′ 𝑡ℎ𝑒𝑛 𝑡ℎ𝑒𝑟𝑒 𝑖𝑠 𝑎 𝑑𝑖𝑓𝑓𝑒𝑟𝑒𝑛𝑐𝑒. Bluman, Chapter 12

Compare the calculator results with the values on the chart. The value of 𝑆 𝑤 2 can be found on: 1) ANOVA Summary Table 2) Calculator Source Sum of Squares d.f. Mean Squares F Between Within (error) 160.13 104.80 2 12 80.07 8.73 9.17 Total 264.93 14 Compare the calculator results with the values on the chart.

Chapter 12 Analysis of Variance Section 12-2 Example 12-3 Page #641 Bluman, Chapter 12

Example 12-3: Lowering Blood Pressure Using the Scheffé test, test each pair of means in Example 12–1 to see whether a specific difference exists, at α = 0.05. Bluman, Chapter 12

Example 12-3: Lowering Blood Pressure Using the Scheffé test, test each pair of means in Example 12–1 to see whether a specific difference exists, at α = 0.05. Bluman, Chapter 12

Example 12-3: Lowering Blood Pressure The critical value for the ANOVA for Example 12–1 was F = 3.89, found by using Table H with α = 0.05, d.f.N. = 2, and d.f.D. = 12. In this case, it is multiplied by k – 1 as shown. 𝐹 ′ = 𝑘−1 𝐶𝑉 =2×3.89=7.78 Since only the F test value for part a ( versus ) is greater than the critical value, 7.78, the only significant difference is between and , that is, between medication and exercise. Bluman, Chapter 12

An Additional Note On occasion, when the F test value is greater than the critical value, the Scheffé test may not show any significant differences in the pairs of means. This result occurs because the difference may actually lie in the average of two or more means when compared with the other mean. The Scheffé test can be used to make these types of comparisons, but the technique is beyond the scope of this book. Bluman, Chapter 12

The Tukey Test The Tukey test can also be used after the analysis of variance has been completed to make pairwise comparisons between means when the groups have the same sample size. The symbol for the test value in the Tukey test is q. Bluman, Chapter 12

Formula for the Tukey Test where and are the means of the samples being compared, is the size of the sample, and the within-group variance is . Bluman, Chapter 12

Chapter 12 Analysis of Variance Section 12-2 Example 12-4 Page #642 Bluman, Chapter 12

Example 12-4: Lowering Blood Pressure Using the Tukey test, test each pair of means in Example 12–1 to see whether a specific difference exists, at α = 0.05. Bluman, Chapter 12

Example 12-3: Lowering Blood Pressure Using the Tukey test, test each pair of means in Example 12–1 to see whether a specific difference exists, at α = 0.05. Bluman, Chapter 12

Example 12-3: Lowering Blood Pressure To find the critical value for the Tukey test, use Table N. The number of means k is found in the row at the top, and the degrees of freedom for are found in the left column (denoted by v). Since k = 3, d.f. = 12, and α = 0.05, the critical value is 3.77. Bluman, Chapter 12

Example 12-3: Lowering Blood Pressure Hence, the only q value that is greater in absolute value than the critical value is the one for the difference between and . The conclusion, then, is that there is a significant difference in means for medication and exercise. These results agree with the Scheffé analysis. Bluman, Chapter 12

Homework Read section 12.2 Sec 12.2 page 646 #1,2,3,5, 11 Bluman, Chapter 12