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A researcher wishes to estimate, with 95% confidence, the proportion who own a laptop. A previous study shows that 70% of those interviewed had a laptop computer. How large a sample should the researcher select so that the estimate will be within 3% of the true proportion?

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Answer:

The sample needs to be at least n = 897 in size.

Explanation:

Given

Confidence Level = 95%

Let p = those who had laptop

p = 70% = 0.7

Margin of Error = 3% = 0.03

Let n = required sample.

To estimate the proportion of laptop owners with 95% confidence, first the z-value is calculated.
z_((a/2))

Given that confidence level = 95%

α = 1 − 95 %

α = 1 − 0.95

α = 0.05

So;


z_((a/2)) =
z_((0.05/2))


z_((a/2)) =
z_((0.025))

From the z table


z_((0.025)) = 1.96

Using formula for margin of error


M.E = z_((0.025)) * \sqrt{(pq)/(n) }

where p + q =1

q = 1 - p

q = 1 - 0.7

q = 0.3

So,


M.E = z_((0.025)) * \sqrt{(pq)/(n) }


0.03 = 1.96 * \sqrt{(0.7 * 0.3)/(n) } --- Make n the subject of formula

First, square both sides


0.03^(2) = 1.96^(2) * {(0.7 * 0.3)/(n) } ------ Multiply both sides by
{(n)/(0.03^(2))}


0.03^(2) * {(n)/(0.03^(2))} = 1.96^(2) * {(0.7 * 0.3)/(n) } * {(n)/(0.03^(2))}


n = 1.96^(2) * {(0.7 * 0.3)/(0.03^(2)) }


n = {(0.806736)/(0.0009) }


n = 896.473

Hence, the sample needs to be at least n = 897 in size.

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