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Chapter 12 Simple Linear Regression n Simple Linear Regression Model n Least Squares Method n Coefficient of Determination n Model Assumptions n Testing for Significance n Using the Estimated Regression Equation for Estimation and Prediction for Estimation and Prediction n Computer Solution n Residual Analysis: Validating Model Assumptions
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Simple Linear Regression Model n The equation that describes how y is related to x and an error term is called the regression model. n The simple linear regression model is: y = 0 + 1 x + 0 and 1 are called parameters of the model. 0 and 1 are called parameters of the model. is a random variable called the error term. is a random variable called the error term.
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Simple Linear Regression Equation n The simple linear regression equation is: E ( y ) = 0 + 1 x Graph of the regression equation is a straight line. Graph of the regression equation is a straight line. 0 is the y intercept of the regression line. 0 is the y intercept of the regression line. 1 is the slope of the regression line. 1 is the slope of the regression line. E ( y ) is the expected value of y for a given x value. E ( y ) is the expected value of y for a given x value.
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Simple Linear Regression Equation n Positive Linear Relationship E(y)E(y)E(y)E(y) x Slope 1 is positive Regression line Intercept 0
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Simple Linear Regression Equation n Negative Linear Relationship E(y)E(y)E(y)E(y) x Slope 1 is negative Regression line Intercept 0
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Simple Linear Regression Equation n No Relationship E(y)E(y)E(y)E(y) x Slope 1 is 0 Regression line Intercept 0
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Estimated Simple Linear Regression Equation n The estimated simple linear regression equation is: The graph is called the estimated regression line. The graph is called the estimated regression line. b 0 is the y intercept of the line. b 0 is the y intercept of the line. b 1 is the slope of the line. b 1 is the slope of the line. is the estimated value of y for a given x value. is the estimated value of y for a given x value.
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Estimation Process Regression Model y = 0 + 1 x + Regression Equation E ( y ) = 0 + 1 x Unknown Parameters 0, 1 Sample Data: x y x 1 y 1...... x n y n Estimated Regression Equation Sample Statistics b 0, b 1 b 0 and b 1 provide estimates of 0 and 1
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Least Squares Method n Least Squares Criterion where: y i = observed value of the dependent variable for the i th observation for the i th observation y i = estimated value of the dependent variable for the i th observation for the i th observation ^
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n Slope for the Estimated Regression Equation The Least Squares Method
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n y -Intercept for the Estimated Regression Equation where: x i = value of independent variable for i th observation y i = value of dependent variable for i th observation x = mean value for independent variable x = mean value for independent variable y = mean value for dependent variable y = mean value for dependent variable n = total number of observations n = total number of observations _ _ The Least Squares Method
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Example: Reed Auto Sales n Simple Linear Regression Reed Auto periodically has a special week-long sale. As part of the advertising campaign Reed runs one or more television commercials during the weekend preceding the sale. Data from a sample of 5 previous sales are shown on the next slide. Reed Auto periodically has a special week-long sale. As part of the advertising campaign Reed runs one or more television commercials during the weekend preceding the sale. Data from a sample of 5 previous sales are shown on the next slide.
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Example: Reed Auto Sales n Simple Linear Regression Number of TV Ads Number of Cars Sold Number of TV Ads Number of Cars Sold 114 324 218 117 327
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n Slope for the Estimated Regression Equation b 1 = 220 - (10)(100)/5 = 5 b 1 = 220 - (10)(100)/5 = 5 24 - (10) 2 /5 24 - (10) 2 /5 n y -Intercept for the Estimated Regression Equation b 0 = 20 - 5(2) = 10 b 0 = 20 - 5(2) = 10 n Estimated Regression Equation y = 10 + 5 x ^ Example: Reed Auto Sales
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n Scatter Diagram ^
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The Coefficient of Determination n Relationship Among SST, SSR, SSE SST = SSR + SSE where: SST = total sum of squares SST = total sum of squares SSR = sum of squares due to regression SSR = sum of squares due to regression SSE = sum of squares due to error SSE = sum of squares due to error ^^
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n The coefficient of determination is: r 2 = SSR/SST where: SST = total sum of squares SST = total sum of squares SSR = sum of squares due to regression SSR = sum of squares due to regression The Coefficient of Determination
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n Coefficient of Determination r 2 = SSR/SST = 100/114 =.8772 The regression relationship is very strong because 88% of the variation in number of cars sold can be explained by the linear relationship between the number of TV ads and the number of cars sold. Example: Reed Auto Sales
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The Correlation Coefficient n Sample Correlation Coefficient where: b 1 = the slope of the estimated regression b 1 = the slope of the estimated regressionequation
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Example: Reed Auto Sales n Sample Correlation Coefficient The sign of b 1 in the equation is “+”. r xy = +.9366 r xy = +.9366
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Model Assumptions Assumptions About the Error Term Assumptions About the Error Term 1.The error is a random variable with mean of zero. 2.The variance of , denoted by 2, is the same for all values of the independent variable. 3.The values of are independent. 4.The error is a normally distributed random variable.
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Testing for Significance To test for a significant regression relationship, we must conduct a hypothesis test to determine whether the value of 1 is zero. To test for a significant regression relationship, we must conduct a hypothesis test to determine whether the value of 1 is zero. n Two tests are commonly used t Test t Test F Test F Test Both tests require an estimate of 2, the variance of in the regression model. Both tests require an estimate of 2, the variance of in the regression model.
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An Estimate of 2 An Estimate of 2 The mean square error (MSE) provides the estimate of 2, and the notation s 2 is also used. s 2 = MSE = SSE/(n-2) s 2 = MSE = SSE/(n-2)where: Testing for Significance
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An Estimate of An Estimate of To estimate we take the square root of 2. To estimate we take the square root of 2. The resulting s is called the standard error of the estimate. The resulting s is called the standard error of the estimate.
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n Hypotheses H 0 : 1 = 0 H 0 : 1 = 0 H a : 1 = 0 H a : 1 = 0 n Test Statistic Testing for Significance: t Test
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n Rejection Rule Reject H 0 if t t where: t is based on a t distribution with n - 2 degrees of freedom with n - 2 degrees of freedom Testing for Significance: t Test
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n t Test Hypotheses Hypotheses H 0 : 1 = 0 H 0 : 1 = 0 H a : 1 = 0 H a : 1 = 0 Rejection Rule Rejection Rule For =.05 and d.f. = 3, t.025 = 3.182 For =.05 and d.f. = 3, t.025 = 3.182 Reject H 0 if t > 3.182 Reject H 0 if t > 3.182 Example: Reed Auto Sales
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n t Test Test Statistics Test Statistics t = 5/1.08 = 4.63 Conclusions Conclusions t = 4.63 > 3.182, so reject H 0 t = 4.63 > 3.182, so reject H 0 Example: Reed Auto Sales
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Confidence Interval for 1 We can use a 95% confidence interval for 1 to test the hypotheses just used in the t test. We can use a 95% confidence interval for 1 to test the hypotheses just used in the t test. H 0 is rejected if the hypothesized value of 1 is not included in the confidence interval for 1. H 0 is rejected if the hypothesized value of 1 is not included in the confidence interval for 1.
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Confidence Interval for 1 The form of a confidence interval for 1 is: The form of a confidence interval for 1 is: where b 1 is the point estimate is the margin of error is the t value providing an area of /2 in the upper tail of a t distribution with n - 2 degrees t distribution with n - 2 degrees of freedom
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n Rejection Rule Reject H 0 if 0 is not included in the confidence interval for 1. 95% Confidence Interval for 1 95% Confidence Interval for 1 = 5 +/- 3.182(1.08) = 5 +/- 3.44 = 5 +/- 3.182(1.08) = 5 +/- 3.44 or 1.56 to 8.44 n Conclusion 0 is not included in the confidence interval. Reject H 0 Reject H 0 Example: Reed Auto Sales
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n Hypotheses H 0 : 1 = 0 H 0 : 1 = 0 H a : 1 = 0 H a : 1 = 0 n Test Statistic F = MSR/MSE Testing for Significance: F Test
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n Rejection Rule Reject H 0 if F > F where: F is based on an F distribution with 1 d.f. in the numerator and n - 2 d.f. in the denominator Testing for Significance: F Test
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n F Test Hypotheses Hypotheses H 0 : 1 = 0 H 0 : 1 = 0 H a : 1 = 0 H a : 1 = 0 Rejection Rule Rejection Rule For =.05 and d.f. = 1, 3: F.05 = 10.13 For =.05 and d.f. = 1, 3: F.05 = 10.13 Reject H 0 if F > 10.13. Reject H 0 if F > 10.13. Example: Reed Auto Sales
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n F Test Test Statistic Test Statistic F = MSR/MSE = 100/4.667 = 21.43 Conclusion Conclusion F = 21.43 > 10.13, so we reject H 0. Example: Reed Auto Sales
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Some Cautions about the Interpretation of Significance Tests Rejecting H 0 : 1 = 0 and concluding that the relationship between x and y is significant does not enable us to conclude that a cause-and-effect relationship is present between x and y. Rejecting H 0 : 1 = 0 and concluding that the relationship between x and y is significant does not enable us to conclude that a cause-and-effect relationship is present between x and y. Just because we are able to reject H 0 : 1 = 0 and demonstrate statistical significance does not enable us to conclude that there is a linear relationship between x and y. Just because we are able to reject H 0 : 1 = 0 and demonstrate statistical significance does not enable us to conclude that there is a linear relationship between x and y.
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n Confidence Interval Estimate of E ( y p ) n Prediction Interval Estimate of y p y p + t /2 s ind y p + t /2 s ind where:confidence coefficient is 1 - and t /2 is based on a t distribution with n - 2 degrees of freedom Using the Estimated Regression Equation for Estimation and Prediction
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n Point Estimation If 3 TV ads are run prior to a sale, we expect the mean number of cars sold to be: y = 10 + 5(3) = 25 cars ^ Example: Reed Auto Sales
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n Confidence Interval for E ( y p ) 95% confidence interval estimate of the mean number of cars sold when 3 TV ads are run is: 25 + 4.61 = 20.39 to 29.61 cars Example: Reed Auto Sales
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n Prediction Interval for y p 95% prediction interval estimate of the number of cars sold in one particular week when 3 TV ads are run is: 25 + 8.28 = 16.72 to 33.28 cars 25 + 8.28 = 16.72 to 33.28 cars Example: Reed Auto Sales
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n Residual for Observation i y i – y i y i – y i n Standardized Residual for Observation i where: Residual Analysis ^^^ ^
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Example: Reed Auto Sales n Residuals
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Example: Reed Auto Sales n Residual Plot
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Residual Analysis n Residual Plot x 0 Good Pattern Residual
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Residual Analysis n Residual Plot x 0 Nonconstant Variance Residual
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Residual Analysis n Residual Plot x 0 Model Form Not Adequate Residual
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