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1.) The Target Corporation personnel director wants to estimate the number of employees within one year of retirement. A random sample of 120 employee records is selected, and 36 people are found to be within one year of retirement. Formulate an 84% interval estimate for the true proportion of employees within one year of retirement in the entire corporation. Observed proportion = 36/120 = 0.3 Standard error = sqrt(0.3*(1-0.3)/120) = 0.041833 For 84% confidence level, z-score = 1.4051 lower limit = 0.3 - 1.4051*0.041833 = 0.24122 upper limit = 0.3+1.4051*0.041833 = 0.35878 So, confidence interval for true proportion is (0.24122, 0.35878) 2) As a quality control expert, you want to estimate the mean thickness of optical lenses produced by your firm. A sample of 144 lenses reveals a mean of 0.52 millimeters (mm). The population standard deviation is known to be 0.17 mm. Construct a 95% confidence interval. Standard error = 0.17/sqrt(144) = 0.014167 For 95% confidence level, z-score = 1.96 lower limit = 0.52 - 1.96*0.01467 = 0.49125 upper limit = 0.52 + 1.96*0.01467 = 0.54875 So, confidence interval is (0.49125, 0.54875) 3) As the new manager for a CPA firm, you want to establish the confidence interval for the time to complete a medium sized organization's tax return. A sample of 25 medium corporate accounts is selected at random. The sample mean and standard deviation are 20 days and 4 days, respectively. Using a confidence interval of 90%, construct the interval. Standard error = 4/sqrt(25) = 0.8 degree of freedom = 25-1 = 24 For 90% confidence level, t-score = 1.7109 lower limit = 20 - 1.7109*0.8 = 18.6313 upper limit = 20+1.7109*0.8 = 21.3687 So, confidence interval is (18.6313, 21.3687) 4) A manufacturer of detergent claims that the mean weight of a particular box of detergent is at least 3.25 pounds. A random sample of 81 boxes reveals a sample average of 3.18 pounds and a sample standard deviation of 0.15 pounds. Using a 0.10 level of significance, is there evidence that the average weight of the boxes is different from at least 3.25 pounds as stated above? Ho: Average weight is at least 3.25 pounds. (µ≥3.25) Ha: Average weight is less than 3.25 pounds. (µ<3.25) t-statistic = (3.18 - 3.25)/(0.15/sqrt(81)) = -4.2 critical region: t<-1.2922 Decision: Null hypothesis is rejected as test statistic lies in critical region. There is sufficient evidence that the average weight of the boxes is different from at least 3.25 pounds as claimed. 5) A package-filling device is set to fill cereal boxes with a mean weight of 20 ounces of cereal per box. The population standard deviation for the filling machine is 0.5 ounces. A random sample of 25 filled boxes is weighed, yielding a mean weight of 20.27 ounces. Test at the 0.05 significance level to determine whether the device is working properly. Ho: Mean weight of cereal per box = 20 ounces Ha: Mean weight of cereal per box ≠ 20 ounces z-statistic = (20.27 - 20)/(0.5/sqrt(25)) = 2.7 critical region: z<-1.96 or z>1.96 Decision: Null hypothesis is rejected since test statistic lies in critical region. The device isn’t working properly as mean weight of cereal boxes is different from 20 ounces. 6) The manager of the credit department for an oil company would like to determine whether the average monthly balance of credit card holders is greater than $75. An auditor selects a random sample of 100 accounts and finds that the average owed is $83.40 with a population standard deviation of $23.65. Using the 0.05 level of significance, should the auditor conclude that there is evidence that the average balance is greater than $75? Ho: Average balance in less than or equal to $75. (µ≤75) Ha: Average balance is greater than $75. (µ>75) z-statistic = (83.40-75)/(23.65/sqrt(100)) = 3.5518 critical region = z>1.6449 Decision: Null hypothesis is rejected because test statistic lies in critical region. There is sufficient evidence that the average balance is greater than $75. 7. Linear Regression Below is the printout for a regression of crop yield on rainfall, fertilizer, and soil acidity. Predictor B CoefStdevBeta Constant 3.3 Rain 0.230.1588 0.2508 Fertilizer 1.150.2772 0.7714 Acid-0.1130.1093-0.0935 S= 6.4987 r-sq = 0.9283 r-sq (adj) = 0.9087 Using the computer results for the regression analysis answer the following: a.Write the equation to describe the model. Crop yield = 3.3 + 0.23*Rain + 1.15*Fertilizer - 0.113*Acid b.Explain the relationships between fertilizer and crop yield. There is positive relationship between fertilizer and crop yield. If fertilizer is increased by 1 units, crop yield increases by 1.15 units. c.Is the relationship between soil acidity a direct or inverse relationship? The relationship between soil acidity and crop yield is inverse. d.Is this a model a good fit and justify your response? This model is a good fit because r-squared value is 0.9283. This means about 92.83% of variation of crop yield is explained by the predictors. e.What is the adjusted coefficient of determination and explain what it means Adjusted coefficient of determination is 0.9087. This is the R-squared value after adjusting for the upward bias resulted from addition of multiple predictors in the models.