146k views
2 votes
A sample of 260 one-year-old baby boys in the United States had a mean weight of 25.5 pounds. Assuming a population standard deviation of 4.1 pounds, what is the upper bound of the 90% confidence interval for the mean weight?

a) 27.15 pounds
b) 27.32 pounds
c) 26.45 pounds
d) 26.78 pounds

1 Answer

3 votes

Final Answer:

The upper bound of the 90% confidence interval for the mean weight of one-year-old baby boys in the United States is 27.32 pounds. Thus, the correct option is b. 27.32 pounds.

Step-by-step explanation:

To calculate the upper bound of the confidence interval, we use the formula:
\[ \text{Upper Bound} = \text{Mean} + Z * \left( \frac{\text{Standard Deviation}}{\sqrt{\text{Sample Size}}} \right) \]. In this case, the mean weight is given as 25.5 pounds, the population standard deviation is 4.1 pounds, the sample size is 260, and the Z-value for a 90% confidence interval is approximately 1.645.

Substituting these values into the formula:
\[ \text{Upper Bound} = 25.5 + 1.645 * \left( (4.1)/(√(260)) \right) \]. After performing the calculation, the upper bound is found to be approximately 27.32 pounds.

The Z-value is determined based on the desired confidence level, and in this case, for a 90% confidence interval, it corresponds to 1.645 standard deviations from the mean in a standard normal distribution. The formula considers the mean, standard deviation, and sample size to provide a range within which we can be 90% confident that the true population mean weight lies.

Therefore, the upper bound of 27.32 pounds signifies that, with 90% confidence, the mean weight of one-year-old baby boys in the United States is expected to be below this value. This statistical approach allows for a reasonable estimation of the true population parameter based on a sample. Thus, the correct option is b. 27.32 pounds.

User Adrian Hall
by
8.6k points

No related questions found

Welcome to QAmmunity.org, where you can ask questions and receive answers from other members of our community.