Chapter 8: Problem 11
A random sample of \(n=900\) observations from a binomial population produced \(x=655\) successes. Estimate the binomial proportion \(p\) and calculate the margin of error.
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Chapter 8: Problem 11
A random sample of \(n=900\) observations from a binomial population produced \(x=655\) successes. Estimate the binomial proportion \(p\) and calculate the margin of error.
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Do you own an iPod Nano or a Sony Walkman Bean? These and other brands of MP3 players are becoming more and more popular among younger Americans. An iPod survey reported that \(54 \%\) of 12 - to 17 -year-olds, \(30 \%\) of 18 - to 34 -year-olds, and \(13 \%\) of 35 - to 54 -year-olds own MP3 players. \({ }^{6}\) Suppose that these three estimates are based on random samples of size \(400,350,\) and \(362,\) respectively. a. Construct a \(95 \%\) confidence interval estimate for the proportion of 12 - to 17 -year-olds who own an MP3 player. b. Construct a \(95 \%\) confidence interval estimate for the proportion of 18 - to 34 -year-olds who own an MP3 player.
A sampling of political candidates -200 randomly chosen from the West and 200 from the East-was classified according to whether the candidate received backing by a national labor union and whether the candidate won. In the West, 120 winners had union backing, and in the East, 142 winners were backed by a national union. Find a \(95 \%\) confidence interval for the difference between the proportions of union-backed winners in the West versus the East. Interpret this interval.
Last year's records of auto accidents occurring on a given section of highway were classified according to whether the resulting damage was \(\$ 1000\) or more and to whether a physical injury resulted from the accident. The data follows: $$\begin{array}{lcc} & \text { Under } \$ 1000 & \$ 1000 \text { or More } \\\\\hline \text { Number of Accidents } & 32 & 41 \\\\\text { Number Involving Injuries } & 10 & 23\end{array}$$ a. Estimate the true proportion of accidents involving injuries when the damage was \(\$ 1000\) or more for similar sections of highway and find the margin of error. b. Estimate the true difference in the proportion of accidents involving injuries for accidents with damage under \(\$ 1000\) and those with damage of \(\$ 1000\) or more. Use a \(95 \%\) confidence interval.
A random sample of \(n=300\) observations from a binomial population produced \(x=263\) successes. Find a \(90 \%\) confidence interval for \(p\) and interpret the interval.
Calculate the margin of error in estimating a binomial proportion \(p\) using samples of size \(n=100\) and the following values for \(p\) : a. \(p=.1\) b. \(p=.3\) c. \(p=.5\) d. \(p=.7\) e. \(p=.9\) f. Which of the values of \(p\) produces the largest margin of error?
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