APPLIED STAT.IN BUS.+ECONOMICS-ACCESS
APPLIED STAT.IN BUS.+ECONOMICS-ACCESS
6th Edition
ISBN: 9781260518702
Author: DOANE
Publisher: MCG
bartleby

Concept explainers

bartleby

Videos

Question
Book Icon
Chapter 13, Problem 45CE

(a)

To determine

Find the regression model.

(a)

Expert Solution
Check Mark

Answer to Problem 45CE

The regression model is Cost Per Load=26.00006.3000Topload0.2714Powder

Explanation of Solution

Calculation:

The given information is that, a regression model is fitted to predict the cost per load for 20 types of laundry detergents using the binary predictors X1 = top load (1 if washer is a top-loading model, 0 otherwise) and X2 = Powder (if detergent was in powder form, 0 otherwise).

Multiple Regression equation:

The multiple regression equation with response variable Y which is related to k predictors (X1,X2,...,Xk) is,

y=β0+β1x1+β2x2+...+βkxk+ε

In the equation, β0,β1,...,βk denotes the parameters that are unknown coefficients, ε denotes the random error.

The estimated multiple regression equation with response variable Y which is related to k predictors (X1,X2,...,Xk) is,

y^=b0+b1x1+b2x2+...+bkxk

In the equation, y^ denotes the predicted value of response variable Y, b0,b1,...,bk denotes the estimated coefficients from sample.

The results have given that, the value of intercept is b0=26.0000, the estimated coefficient for top load is b1=6.3000, for powder is b2=0.2714.

The fitted regression equation is,

Cost Per Load=26.00006.3000Topload0.2714Powder.

(b)

To determine

State the conclusion about the overall fit of the model referring F statistic.

State the conclusion about the overall fit of the model referring p-value.

(b)

Expert Solution
Check Mark

Answer to Problem 45CE

The conclusion about the overall fit of the model referring F statistic is all the coefficients are equal to zero and the overall regression is not significant.

The conclusion about the overall fit of the model referring p-value is all the coefficients are equal to zero and the overall regression is not significant.

Explanation of Solution

Calculation:

From the reported results, the value of F statistic is 1.06, the degrees of freedom for regression are 2, degrees of freedom for residual are 13 and the p-value is 0.3710. The considered level of significance is α=0.05.

The formula for F statistic is,

Fcalc=MSRMSE

In the formula, MSR denotes the mean square regression and MSE denotes the mean square error.

Rejection rules based on F statistic:

  • • If the test statistic value is greater than the critical value, then reject the null hypothesis. The regression is significant.
  • • If the test statistic value is smaller than the critical value, then retain the null hypothesis. The regression is not significant.

Rejection rules based on p-value:

  • • If p-value is less than the level of significance then the null hypothesis is rejected. The predictor is significant.
  • • If p-value is greater than the level of significance then the null hypothesis is not rejected. The predictor is not significant.

Let β1 denote the coefficient for predictor X1 = top load (1 if washer is a top-loading model, 0 otherwise) and let β2 denote the coefficient for predictor  X2 = Powder (if detergent was in powder form, 0 otherwise).

Null hypothesis:

H0: All the coefficients are equal to zero (β1=β2=0).

Alternative hypothesis:

H1: At least one of the coefficients is not zero.

Critical value:

The considered significance level is α=0.05.

The degrees of freedom for numerator are 2, the degrees of freedom for denominator are 16 from completed F table.

From the Appendix F: Critical values of F.05:

  • • Locate the value 2 in numerator degrees of freedom (df1) row.
  • • Locate the value 16 in denominator degrees of freedom (df2) column.
  • • The intersecting value that corresponds to the (2, 16) with level of significance 0.05 is 3.63.

Hence, the critical value for df=(2,16) with 0.05, level of significance is 3.63.

Conclusion referring F statistic:

The value of test statistic is 1.06.

The critical value is 3.63.

The test statistic value is less than the critical value.

The null hypothesis is not rejected.

The decision is that all the coefficients are equal to zero and the overall regression is not significant.

Conclusion referring p-value:

The p-value for overall regression is 0.3710.

The level of significance is 0.05.

The p-value is greater than the level of significance.

That is, p-value(=0.3710)>α(=0.05).

The null hypothesis is not rejected.

The decision is that all the coefficients are equal to zero and the overall regression is not significant.

(c)

To determine

State the conclusion for each individual predictor’s significance.

(c)

Expert Solution
Check Mark

Answer to Problem 45CE

The predictor top-load is not significant. The predictor variable top-load is not related to cost per load.

The predictor powder is not significant. The predictor variable powder is not related to cost per load.

Explanation of Solution

Calculation:

From the reported results, the p-value for predictor Top-load is 0.1881 and p-value for predictor powder is 0.9270. The level of significance considered is α=0.05.

For top-load:

Let β1 is the parameter for the predictor top-load.

Null hypothesis:

H0:β1=0

The predictor variable top-load is not related to cost per load.

Alternative hypothesis:

H1:β10

The predictor variable top-load is related to cost per load.

Conclusion:

The p-value for predictor top load is 0.1881.

The level of significance is 0.05.

The p-value is greater than the level of significance.

That is, p-value(=0.1881)>α(=0.05).

The null hypothesis is not rejected.

The predictor variable top-load is not related to cost per load.

The predictor top-load is not significant.

For seats-Patio:

Let β2 is the parameter for the predictor powder.

Null hypothesis:

H0:β2=0

The predictor variable powder is not related to cost per load.

Alternative hypothesis:

H1:β20

The predictor variable powder is related to cost per load.

Conclusion:

The p-value for predictor powder is 0.9270.

The level of significance is 0.05.

The p-value is greater than the level of significance.

That is, p-value(=0.9270)>α(=0.05).

The null hypothesis is not rejected.

The predictor variable powder is not related to cost per load.

The predictor powder is not significant.

Want to see more full solutions like this?

Subscribe now to access step-by-step solutions to millions of textbook problems written by subject matter experts!
Students have asked these similar questions
In a laboratory experiment, data were gathered on the life span (y in months) of 33 rats, units of daily protein intake (x1), and whether or not agent x2 (a proposed life-extending agent) was added to the rats' diet (x2 = 0 if agent x2 was not added, and x2 = 1 if agent was added). From the results of the experiment, the following regression model was developed:ŷ = 36 + .8x1 − 1.7x2Also provided are SSR = 60 and SST = 180.The test statistic for testing the significance of the model is _____.   a. 5.00     b. .50     c. .25     d. .33
Data was collected on 54 observations on a response of interest, y, and four potential predictor variables x1, x2, x3, and x4. The output from regression analyses of the data is attached to the end of the page. d) Is the variable from your best simple linear regression model (from part a) included in the model with the lowest overall MSE (part b)? Briefly explain why it could happen that the best single variable is not in the best overall model. e) Following the best subsets regression results, the sums of squares for regression and error (also called residual) are displayed for several models. Using the regression sums of squares information for the full model containing all four x variables, calculate i) the R2 value for the full model, ii) the F statistic for the test of the H0: b1 = b2 = b3 = b4 = 0, and iii) the standard deviation of the residuals for the full model. f) Using the regression sums of squares information, test the null hypothesis H0:b2 = b4 = 0 for the full model.…
It is believed that the annual repair cost for the sporty automobile Jeep is related to its age. A sample of 11 automobiles revealed the results in the table at the right. Car age (xi) 2 3 1 7 5 8 1 2 6 9 4 Repair cost (yi) in £ 72 99 65 138 67 140 83 101 170 121 114 Define the terms regression and correlation analysis  From the simple linear model , determine parameters and , with an interpretation of your linear model  What would be the cost of repairing car that has been in use for 13 years

Chapter 13 Solutions

APPLIED STAT.IN BUS.+ECONOMICS-ACCESS

Ch. 13.3 - Prob. 11SECh. 13.3 - A regression model to predict Y, the state...Ch. 13.4 - A regression of accountants starting salaries in a...Ch. 13.4 - An agribusiness performed a regression of wheat...Ch. 13.5 - Prob. 15SECh. 13.5 - A regression model to predict the price of...Ch. 13.5 - Prob. 17SECh. 13.5 - Prob. 18SECh. 13.6 - Prob. 19SECh. 13.6 - Prob. 20SECh. 13.7 - Prob. 21SECh. 13.7 - Using the Metals data, construct a correlation...Ch. 13.8 - Prob. 23SECh. 13.8 - Which violations of regression assumptions, if...Ch. 13 - (a) List two limitations of simple regression. (b)...Ch. 13 - (a) What does represent in the regression model?...Ch. 13 - Prob. 3CRCh. 13 - Prob. 4CRCh. 13 - Prob. 5CRCh. 13 - Prob. 6CRCh. 13 - Prob. 7CRCh. 13 - Prob. 8CRCh. 13 - Prob. 9CRCh. 13 - (a) State the formula for the standard error of...Ch. 13 - (a) What is a binary predictor? (b) Why is a...Ch. 13 - Prob. 12CRCh. 13 - Prob. 13CRCh. 13 - (a) What is multicollinearity? (b) What are its...Ch. 13 - Prob. 15CRCh. 13 - (a) State the formula for a variance inflation...Ch. 13 - Prob. 17CRCh. 13 - Prob. 18CRCh. 13 - Prob. 19CRCh. 13 - Prob. 20CRCh. 13 - (a) Name two ways to detect autocorrelated...Ch. 13 - (a) What is a lurking variable? How might it be...Ch. 13 - Prob. 23CRCh. 13 - Instructions for Data Sets: Choose one of the data...Ch. 13 - Note: Exercises marked are based on optional...Ch. 13 - Prob. 27CECh. 13 - Note: Exercises marked are based on optional...Ch. 13 - Note: Exercises marked are based on optional...Ch. 13 - Prob. 30CECh. 13 - Prob. 31CECh. 13 - Prob. 32CECh. 13 - Prob. 33CECh. 13 - Prob. 34CECh. 13 - Prob. 35CECh. 13 - Note: Exercises marked are based on optional...Ch. 13 - Note: Exercises marked are based on optional...Ch. 13 - Note: Exercises marked are based on optional...Ch. 13 - Prob. 39CECh. 13 - Prob. 40CECh. 13 - Prob. 41CECh. 13 - In a model of Fords quarterly revenue TotalRevenue...Ch. 13 - In a study of paint peel problems, a regression...Ch. 13 - A hospital emergency room analyzed n = 17,664...Ch. 13 - Prob. 45CECh. 13 - A researcher used stepwise regression to create...Ch. 13 - A sports enthusiast created an equation to predict...Ch. 13 - An expert witness in a case of alleged racial...Ch. 13 - Prob. 50CECh. 13 - Prob. 51CECh. 13 - Prob. 52CECh. 13 - Which statement is correct concerning one-factor...Ch. 13 - Prob. 2ERQCh. 13 - Prob. 3ERQCh. 13 - Prob. 4ERQCh. 13 - Prob. 5ERQCh. 13 - Prob. 6ERQCh. 13 - Prob. 7ERQCh. 13 - Prob. 8ERQCh. 13 - Prob. 9ERQCh. 13 - Prob. 10ERQCh. 13 - Prob. 11ERQCh. 13 - Prob. 12ERQCh. 13 - Prob. 13ERQCh. 13 - Prob. 14ERQCh. 13 - Prob. 15ERQ
Knowledge Booster
Background pattern image
Statistics
Learn more about
Need a deep-dive on the concept behind this application? Look no further. Learn more about this topic, statistics and related others by exploring similar questions and additional content below.
Similar questions
SEE MORE QUESTIONS
Recommended textbooks for you
  • Text book image
    College Algebra
    Algebra
    ISBN:9781305115545
    Author:James Stewart, Lothar Redlin, Saleem Watson
    Publisher:Cengage Learning
Text book image
College Algebra
Algebra
ISBN:9781305115545
Author:James Stewart, Lothar Redlin, Saleem Watson
Publisher:Cengage Learning
Correlation Vs Regression: Difference Between them with definition & Comparison Chart; Author: Key Differences;https://www.youtube.com/watch?v=Ou2QGSJVd0U;License: Standard YouTube License, CC-BY
Correlation and Regression: Concepts with Illustrative examples; Author: LEARN & APPLY : Lean and Six Sigma;https://www.youtube.com/watch?v=xTpHD5WLuoA;License: Standard YouTube License, CC-BY