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Multiple Choice Select the best answer for Exercises 23-28. Exercises 23-28 refer to the following setting. To see if students with longer feet tend to be taller, a random sample of 25students was selected from a large high school. For each student,x=footlengthandy=heightwere recorded. We checked that the conditions for inference about the slope of the population regression line are met. Here is a portion of the computer output from a least-squares regression analysis using these data:

The slope 1of the population regression line describes

a. the exact increase in height (cm) for students at this high school when foot length increases by1.

b. the average increase in foot length(cm) for students at this high school when height increases by 1.

c. the average increase in height (cm) for students at this high school when foot length increases by1.

d. the average increase in foot length (cm) for students in the sample when height increases by1

e. the average increase in height(cm) for students in the sample when foot length increases by1

Short Answer

Expert verified

The correct option is option (c)

The average increase in height (cm) for students at this high school when foot length increases by1

Step by step solution

01

Given Information

Given in the question that

We have to determine the correct option.

02

Explanation

x=footlegth

y=height

1=slope of the population regression line.

The average of yin the population per unit of xis shown by the slope of the population regression line.

As a result, 1depicts the average increase in height of the entire population per cm of foot length.

so, the correct option is option (c)

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