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An economist wants to estimate the mean per capita income (in thousands of dollars) for a major city in Texas. He believes that the mean income is $30.8, and the standard deviation is known to be $8.2. How large of a sample would be required in order to estimate the mean per capita income at the 95% level of confidence with an error of at most $0.39

User Dali
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1 Answer

5 votes

Answer:

A sample of 1699 would be required.

Explanation:

We have that to find our
\alpha level, that is the subtraction of 1 by the confidence interval divided by 2. So:


\alpha = (1 - 0.95)/(2) = 0.025

Now, we have to find z in the Z-table as such z has a p-value of
1 - \alpha.

That is z with a pvalue of
1 - 0.025 = 0.975, so Z = 1.96.

Now, find the margin of error M as such


M = z(\sigma)/(√(n))

In which
\sigma is the standard deviation of the population and n is the size of the sample.

Standard deviation is known to be $8.2.

This means that
\sigma = 8.2

How large of a sample would be required in order to estimate the mean per capita income at the 95% level of confidence with an error of at most $0.39?

This is n for which M = 0.39. So


M = z(\sigma)/(√(n))


0.39 = 1.96(8.2)/(√(n))


0.39√(n) = 1.96*8.2


√(n) = (1.96*8.2)/(0.39)


(√(n))^2 = ((1.96*8.2)/(0.39))^2


n = 1698.3

Rounding up:

A sample of 1699 would be required.

User Erik Veland
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