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Sample Test #4 Math 146 Data Set #1 0.82806 3.46379 4.45048 5.72916 2.28209 3.46387 4.61693 5.82915 2.85516 3.47212 4.64214 5.89093 3.11370 3.60505 5.10139 6.01711 3.13829 4.06108 5.14685 6.19383 3.18826 4.15561 5.20364 6.87012 3.40354 4.37153 5.49842 7.69882 Summaries for this data set: Sum 124.291 Count 28 Sum of Squares 612.300 Data Set #2 We have a second data set with the following statistics: Mean 3.96331 Sample Variance 0.72681 Count 33 Recall: The sample standard deviation is the square root of the sample variance Descriptive Statistics: Calculate for data set #1 only • Sample mean, sample standard deviation, and sample variance • 1st Quartile, Median, and 3rd Quartile Mean 4.43897 Standard Error 0.28307 Median 4.411 1 quartile 3.44873 3 quartile 5.55611 Standard Deviation 1.49785 Sample Variance 2.24356 Inferential Statistics (confidence and significance levels are up to you) Confidence Interval for data set #1 Choosing a confidence level, use the previous data for a confidence interval for the “true” mean (the variance is unknown). Data 1 95% CI for the Mean from 3.85816 to 5.01977 Data 1 99% CI for the Mean from 3.65468 to 5.22326 Data 1 90% CI for the Mean from 3.95682 to 4.92111 Data 1 98% CI for the Mean from 3.73904 to 5.1389 Optional: If you have time left, you may also construct a confidence interval for the second data set. left end right end 95.00% 3.66102 99.00% 4.2656 3.5569 4.36972 90.00% 3.71193 4.21469 98.00% 3.59991 4.32671 Testing for the mean for data set #2 Test the hypothesis (at a level of your choice) H0: μ = 4.2 H0: μ < 4.2 t-score −1.5949 p-value 0.06029 If you chose 5% (or less) as your significance level, you would not reject the Null Hypothesis, since the t-score is higher than the critical value (or, equivalently, because the p-value is larger than 0.05) Testing for equality of two means (clearly, this refers to both data sets) We now want to check if the two data sets could come from “populations” (i.e., probabilistic models) with the same “true” mean, assuming they are independent samples. Set up a test, without assuming that the variances are equal. Equality of means Unequal variances m1-m2 0.47566 E 0.31961 t-score 1.48824 p-value 0.07414 (the p-value was calculated using the simplified choice for the degrees of freedom) Optional: If you have time left, you can repeat the test, assuming, instead, that the populations have equal variances. Equal variances m1-m2 0.47566 E 0.30628 t-score 1.55304 p-value 0.06288