Get the answers you need from a community of experts on IDNLearn.com. Discover thorough and trustworthy answers from our community of knowledgeable professionals, tailored to meet your specific needs.
Sagot :
Let's go through the hypothesis testing step by step:
1. Setting Up Hypotheses:
- Null Hypothesis \( H_0 \): The average customer receipt for the branch is equal to the chain's average, \( \mu = 72 \).
- Alternative Hypothesis \( H_a \): The average customer receipt for the branch is less than the chain's average, \( \mu < 72 \).
2. Significance Level:
- The significance level (\(\alpha\)) is 0.01 (1%).
3. Critical Value:
- From the provided table for a one-tailed test at the 1% significance level, the critical z-value is 2.58. Since we are conducting a lower-tailed test (looking for receipts less than the chain average), we consider the negative of this value, which is -2.58.
4. Sample Data:
- The mean of the branch's receipts (\(\bar{x}\)) is $67.00.
- The mean of the chain's receipts (\(\mu\)) is $72.00.
- Standard deviation (\(\sigma\)) is $11.00.
- Sample size (\(n\)) is 40.
5. Calculate Standard Error of the Mean (SEM):
- \( \text{SEM} = \frac{\sigma}{\sqrt{n}} \)
6. Calculate the z-score:
- \( z = \frac{\bar{x} - \mu}{\text{SEM}} \)
Using the given result:
- The standard error of the mean (SEM) is approximately 1.7393.
- The z-score is approximately -2.8748.
7. Decision Rule:
- If the computed z-score is less than the critical z-value (-2.58), we reject the null hypothesis \( H_0 \).
8. Conclusion:
- The computed z-score (-2.8748) is indeed less than the critical value (-2.58).
- Therefore, we reject the null hypothesis \( H_0 \).
Based on the hypothesis test, we reject \( H_0: \mu = 72 \) and accept \( H_a: \mu < 72 \). This means we have sufficient evidence to conclude that the average receipt for the branch is less than the chain's average, at the 1% significance level.
Hence, the correct choice is:
She should reject [tex]\( H_0: \mu = 72 \)[/tex] and accept [tex]\( H_a: \mu < 72 \)[/tex].
1. Setting Up Hypotheses:
- Null Hypothesis \( H_0 \): The average customer receipt for the branch is equal to the chain's average, \( \mu = 72 \).
- Alternative Hypothesis \( H_a \): The average customer receipt for the branch is less than the chain's average, \( \mu < 72 \).
2. Significance Level:
- The significance level (\(\alpha\)) is 0.01 (1%).
3. Critical Value:
- From the provided table for a one-tailed test at the 1% significance level, the critical z-value is 2.58. Since we are conducting a lower-tailed test (looking for receipts less than the chain average), we consider the negative of this value, which is -2.58.
4. Sample Data:
- The mean of the branch's receipts (\(\bar{x}\)) is $67.00.
- The mean of the chain's receipts (\(\mu\)) is $72.00.
- Standard deviation (\(\sigma\)) is $11.00.
- Sample size (\(n\)) is 40.
5. Calculate Standard Error of the Mean (SEM):
- \( \text{SEM} = \frac{\sigma}{\sqrt{n}} \)
6. Calculate the z-score:
- \( z = \frac{\bar{x} - \mu}{\text{SEM}} \)
Using the given result:
- The standard error of the mean (SEM) is approximately 1.7393.
- The z-score is approximately -2.8748.
7. Decision Rule:
- If the computed z-score is less than the critical z-value (-2.58), we reject the null hypothesis \( H_0 \).
8. Conclusion:
- The computed z-score (-2.8748) is indeed less than the critical value (-2.58).
- Therefore, we reject the null hypothesis \( H_0 \).
Based on the hypothesis test, we reject \( H_0: \mu = 72 \) and accept \( H_a: \mu < 72 \). This means we have sufficient evidence to conclude that the average receipt for the branch is less than the chain's average, at the 1% significance level.
Hence, the correct choice is:
She should reject [tex]\( H_0: \mu = 72 \)[/tex] and accept [tex]\( H_a: \mu < 72 \)[/tex].
We appreciate your contributions to this forum. Don't forget to check back for the latest answers. Keep asking, answering, and sharing useful information. IDNLearn.com has the solutions to your questions. Thanks for stopping by, and see you next time for more reliable information.