This Question: 1 pt This Test: 10 pts Time Remaining: 01:04:35 0 of 10 complete
ID: 3380008 • Letter: T
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This Question: 1 pt This Test: 10 pts Time Remaining: 01:04:35 0 of 10 complete A data set of 5 observations for Concession Sales per person (S) at a theater and Minutes before the movie begins results in the following estimated regression model. Complete parts a through c below Sales-4.4 +0.251 Minutes a) A 90% prediction interval for a concessions customer 10 minutes before the movie starts is ($5.81,$8.01). Explain how to interpret this interval. Choose the correct answer below A. 90% of all customers spend between $5.81 and $8.01 at the concession stand. B. 90% of the 5 observed customers 10 minutes before the movie starts can be expected to spend between $5.81 and $8.01 at the concession stand OC. There is a 90% chance that the mean amount spent by customers at the concession stand 10 minutes before the movie starts is between $5.81 and $8.01 D. 90% of customers 10 minutes before the movie starts can be expected to spend between $5.81 and $8.01 at the concession stand.Explanation / Answer
A prediction interval is an interval associated with a random variable yet to be observed, with a specified probability of the random variable lying within the interval. For example, I might give an 80% interval for the forecast of GDP in 2014. The actual GDP in 2014 should lie within the interval with probability 0.8. Prediction intervals can arise in Bayesian or frequentist statistics.
A confidence interval is an interval associated with a parameter and is a frequentist concept. The parameter is assumed to be non- random but unknown, and the confidence interval is computed from data. Because the data are random, the interval is random. A 95% confidence interval will contain the true parameter with probability 0.95. That is, with a large number of repeated samples, 95% of the intervals would contain the true parameter.
To estimate the uncertainty in our estimate of the conditional mean E(Y|X = x), we can construct a confidence interval for the conditional mean. But, the uncertainty in our estimate of Y when X = x is greater than our uncertainty of E(Y|X = x). Thus, the confidence interval for the conditional mean underestimates the uncertainty in our use of as an estimate of a value of Y|(X = x). Instead, we need what is called a prediction interval, which takes into account the variability in the conditional distribution Y|(X = x) as well as the uncertainty in our estimate of the conditional mean E(Y|(X = x)).
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a)
Based on above theory, we can say that the option (D) is correct because the prediction interval tells us about the interval of the predicted value for a new observation.
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b)
Again, the option (D) is correct because the confidence interval of mean tells us about the interval in which we can expect the value of Y to lie given a particular value of X.
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c)
Option (C) is correct.
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