Loose-leaf Version for The Basic Practice of Statistics 7e & LaunchPad (Twelve Month Access)
Loose-leaf Version for The Basic Practice of Statistics 7e & LaunchPad (Twelve Month Access)
7th Edition
ISBN: 9781319019334
Author: David S. Moore, William I. Notz, Michael A. Fligner
Publisher: W. H. Freeman
Question
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Chapter 26, Problem 26.16CYS
To determine

The equation of the least-square regression line for predicting selling price from appraised value.

Expert Solution & Answer
Check Mark

Answer to Problem 26.16CYS

The correct option is Option (b), Price=111.9+1.2103×appraised value .

Explanation of Solution

Given info:

The equation of the least square regression for predicting selling price from appraised value is given.

Reason for the correct answer:

From the Minitab output, the value of intercept of regression coefficient α is 111.9 and the value of the slope β is 1.2103.

Substitute 111.9 for α ,

Thus, the equation of the least-square regression line is Price=111.9+1.2103×appraised value .

Reason for the incorrect answers:

Option (a) Price=1.2103+111.9×appraised value

From Minitab output, the equation of the least-square regression line for predicting selling price from appraised value is Price=111.9+1.2103×appraised value .

Thus, the equation Price=1.2103+111.9×appraised value is incorrect.

Option (c) Price=123.2+0.1540×appraised value .

From Minitab output, the equation of the least-square regression line for predicting selling price from appraised value is Price=111.9+1.2103×appraised value .

Thus, the equation Price=123.2+0.1540×appraised value is incorrect.

Thus, option (a) and (c) are incorrect.

Conclusion:

Thus, the equation of the least-square regression line for predicting selling price from appraised value is Price=111.9+1.2103×appraised value .

Statistics Concept Introduction

The equation of least-square line is,

Y=α+βX

Where, Y denotes the Price, α denotes the intercept of regression coefficient and β denotes the slope.

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