Applied Statistics in Business and Economics with Connect Access Card with LearnSmart
Applied Statistics in Business and Economics with Connect Access Card with LearnSmart
5th Edition
ISBN: 9781259396656
Author: David Doane, Lori Seward Senior Instructor of Operations Management
Publisher: McGraw-Hill Education
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Textbook Question
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Chapter 12, Problem 4CR

(a) Explain the logic of the ordinary least squares (OLS) method. (b) How are the least squares formulas for the slope and intercept derived? (c) What sums are needed to calculate the least squares estimates?

a.

Expert Solution
Check Mark
To determine

Explain the logic of the ordinary least squares method.

Explanation of Solution

Ordinary least squares method:

For getting the best fit of regression, ordinary least square method can be used. The slope and the intercept are estimated in the way that the residual sum of squares will be minimized.

If only the sum of residuals has used for minimizing the error, there is possibility that the positive and the negative error will be dismissed. Therefor it is logical to use the sum of squares for minimizing the residual.

b.

Expert Solution
Check Mark
To determine

Show how the least squares formula for the slope and the intercept was derived.

Explanation of Solution

Calculation:

Let Y is the response variable and X is the predictor variable. The linear regression line is y=b0+b1x+e.

The error sum of squares is,

iei2=i(yib0b1xi)2

For minimizing the sum of squares, the expression should be derivative by b1 and b0 and substituting the values b^1and b^0.

b1i=1n(yib0b1xi)2|b^0b^1=2i=1n(yib^0b^1xi)xi (1)

b0i=1n(yib0b1xi)2|b^0b^1=2i=1n(yib^0b^1xi) (2)

Now, equating the derivatives with 0,

2i=1n(yib^0b^1xi)=0i=1nyib^0i=1n1b^1i=1nxi=0ny¯nb^0=nb^1x¯b^0=y¯b^1x¯

2i=1n(yib^0b^1xi)xi=0i=1nyixib^0i=1nxib^1i=1nxi2=0b^1i=1nxi2=i=1nxiyi+b^0i=1nxib^1i=1nxi2=i=1nxiyi+(y¯b^1x¯)i=1nxib^1i=1nxi2=i=1nxiyi+y¯i=1nxib^1x¯i=1nxib^1(i=1nxi2+nx¯2)=i=1nxiyi+nx¯y¯b^1=i=1nxiyi+nx¯y¯(i=1nxi2+nx¯2)

Hence, the least square estimator of b1 and b0 are b^1=i=1nxiyi+nx¯y¯(i=1nxi2+nx¯2) and b^0=y¯b^1x¯ respectively.

c.

Expert Solution
Check Mark
To determine

Explain the sums which should be calculated for finding the least squares estimators.

Explanation of Solution

For finding the least square estimates, b^1=i=1nxiyi+nx¯y¯(i=1nxi2+nx¯2) and b^0=y¯b^1x¯, sum of the squared values of X and the sum of the product of X and Y values should be calculated.

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Chapter 12 Solutions

Applied Statistics in Business and Economics with Connect Access Card with LearnSmart

Ch. 12.2 - (a) Interpret the slope of the fitted regression...Ch. 12.3 - Prob. 12SECh. 12.3 - Prob. 13SECh. 12.3 - The regression equation Credits = 15.4 .07 Work...Ch. 12.3 - Below are fitted regressions for Y = asking price...Ch. 12.3 - Refer back to the regression equation in exercise...Ch. 12.3 - Refer back to the regression equation in exercise...Ch. 12.4 - Instructions for exercises 12.18 and 12.19: (a)...Ch. 12.4 - Instructions for exercises 12.18 and 12.19: (a)...Ch. 12.4 - Instructions for exercises 12.2012.22: (a) Use...Ch. 12.4 - Instructions for exercises 12.2012.22: (a) Use...Ch. 12.4 - Instructions for exercises 12.2012.22: (a) Use...Ch. 12.5 - Instructions for exercises 12.23 and 12.24: (a)...Ch. 12.5 - Prob. 24SECh. 12.5 - A regression was performed using data on 32 NFL...Ch. 12.5 - A regression was performed using data on 16...Ch. 12.6 - Prob. 27SECh. 12.6 - Prob. 28SECh. 12.6 - Instructions for exercises 12.2912.31: (a) Use...Ch. 12.6 - Instructions for exercises 12.2912.31: (a) Use...Ch. 12.6 - Instructions for exercises 12.2912.31: (a) Use...Ch. 12.7 - Refer to the Weekly Earnings data set below. (a)...Ch. 12.7 - Prob. 33SECh. 12.8 - Prob. 34SECh. 12.8 - Prob. 35SECh. 12.9 - An estimated regression for a random sample of...Ch. 12.9 - An estimated regression for a random sample of...Ch. 12.9 - Prob. 38SECh. 12.9 - Prob. 39SECh. 12 - (a) How does correlation analysis differ from...Ch. 12 - (a) What is a simple regression model? (b) State...Ch. 12 - (a) Explain how you fit a regression to an Excel...Ch. 12 - (a) Explain the logic of the ordinary least...Ch. 12 - (a) Why cant we use the sum of the residuals to...Ch. 12 - Prob. 6CRCh. 12 - Prob. 7CRCh. 12 - Prob. 8CRCh. 12 - Prob. 9CRCh. 12 - Prob. 10CRCh. 12 - Prob. 11CRCh. 12 - Prob. 12CRCh. 12 - (a) What is heteroscedasticity? Identify its two...Ch. 12 - (a) What is autocorrelation? Identify two main...Ch. 12 - Prob. 15CRCh. 12 - Prob. 16CRCh. 12 - (a) What is a log transform? (b) What are its...Ch. 12 - Prob. 40CECh. 12 - Prob. 41CECh. 12 - Prob. 42CECh. 12 - Prob. 43CECh. 12 - Prob. 44CECh. 12 - Prob. 45CECh. 12 - Prob. 46CECh. 12 - Prob. 47CECh. 12 - Prob. 48CECh. 12 - Prob. 49CECh. 12 - Prob. 50CECh. 12 - Prob. 51CECh. 12 - Prob. 52CECh. 12 - Prob. 53CECh. 12 - Prob. 54CECh. 12 - Prob. 55CECh. 12 - Prob. 56CECh. 12 - Prob. 57CECh. 12 - Prob. 58CECh. 12 - Prob. 59CECh. 12 - In the following regression, X = weekly pay, Y =...Ch. 12 - Prob. 61CECh. 12 - In the following regression, X = total assets (...Ch. 12 - Prob. 63CECh. 12 - Below are percentages for annual sales growth and...Ch. 12 - Prob. 65CECh. 12 - Prob. 66CECh. 12 - Prob. 67CECh. 12 - Simple regression was employed to establish the...Ch. 12 - Prob. 69CECh. 12 - Prob. 70CECh. 12 - Prob. 71CECh. 12 - Below are revenue and profit (both in billions)...Ch. 12 - Below are fitted regressions based on used vehicle...Ch. 12 - Below are results of a regression of Y = average...
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