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Stat 401 Lab Activity 7 In this activity we will do Minitab implementation of CIs and testing concerning two population means and two population proportions. Part I: Test and CIs for two normal means Consider Exercises 9.14 and 9.15. Copy the data from http://www.stat.psu.edu/~mga/401/labs/lab7/uts.data.txt, and paste it in the first two columns of the Minitab worksheet. Normal probability plots on both samples indicate that the normality assumption is tenable. a) For Exercise 9.14 we will assume that the two population variances are the same and will perform the two-sample t-test, and the corresponding CI : Stat > Basic Statistics > 2-Sample t > Choose “Samples in different columns”; Check “Assume equal variances”; Go to “Options” and enter desired choices OK, OK b) For Exercise 9.15 we drop the assumption that the two variances are the same and perform the t-test and corresponding CI by repeating the above sequence of commands except that now we do not check “Assume equal variances”. Part II: Large sample test and CIs for two means Consider Exercise 9.2. Here the sample sizes are large enough, so we do not require the assumption of normality. Use the commands: Stat > Basic Statistics > 2-Sample t > Choose “Summarized data”; Enter: 42, 0.49, and 0.19 for the First sample size, mean, and standard deviation; Enter: 42, 0.36, and 0.16 for the Second sample size, mean and standard deviation, OK Minitab does not perform the 2-sample Z test, but the above with the above commands Minitab calculates the Z statistic, but calls it T-statistic. The value of the T-statistic can be referred to the normal table, even though with large sample sizes, the p-value given by Minitab using the t-distribution should be quite close to the normal distribution p-value. Part III: Test and CIs for two proportions Consider Exercise 9.5. Thus, from population 1 we have 330 successes out of 890 trials and from population 2 we have 170 successes out of 550 trials. Use the commands: Stat > Basic Statistics > 2 Proportions > Choose “Summarized data”; Enter the number of trial and the number of events (successes); Check the “Options”; OK Part IV: The Mann-Whitney-Wilcoxon rank sum test Consider Exercise 9.21. Copy the data from http://www.stat.psu.edu/~mga/401/labs/lab7/cloud.seeding.data.txt, and paste it in columns 3 and 4. Normal probability plots suggest that the normality assumption is not tenable for either sample. Moreover, the sample size is not large enough to apply the CLT. We will use the rank-sum test to test the hypothesis that seeding makes no difference vs the alternative that it increases rain. The procedure also gives corresponding nonparametric CIs. Stat > Nonparametrics > Mann-Whitney > Enter Control for First sample, Seeded for Second sample; Set Confidence level; Select “less than” for Alternative; OK Part V: Paired data Consider Exercise 9.18. Copy the data from http://www.stat.psu.edu/~mga/401/labs/lab7/turbidity.data.txt, and paste it in columns 5 and 6. Stat > Basic Statistics > Paired t > Choose “Samples in columns” and enter the data columns; Check the “Options”, OK Part VI: Do Exercises 2, 5, 14, 15, 18, and 21 using the above Minitab command sequences, and turn it in.