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File: Analysis Ppt 69554 | Multipleregression
chapter 15 chapter 15 multiple regression multiple regression multiple regression model multiple regression model least squares method least squares method multiple coefficient of multiple coefficient of determination determination model assumptions ...

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                              Chapter 15
                              Chapter 15
                        Multiple Regression
                        Multiple Regression
        Multiple Regression Model
          Multiple Regression Model
        Least Squares Method
          Least Squares Method
        Multiple Coefficient of 
          Multiple Coefficient of 
          Determination
        Determination
          Model Assumptions
          Model Assumptions
        Testing for Significance
          Testing for Significance
        Using the Estimated Regression 
          Using the Estimated Regression 
          Equation
          Equation
             for Estimation and Prediction
           for Estimation and Prediction
          Qualitative Independent 
          Qualitative Independent 
          Variables
        Variables
          Residual Analysis
          Residual Analysis
        Logistic 
          Logistic 
          Regression
          Regression
                                                                           
                                                                           
   © 2008  Thomson South-Western.  All Rights Reserved
   © 2008  Thomson South-Western.  All Rights Reserved                2
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                   Multiple Regression Model
                   Multiple Regression Model
        Multiple Regression Model
         Multiple Regression Model
                The equation that describes how the 
                The equation that describes how the 
           dependent variable y is related to the independent 
           dependent variable y is related to the independent 
           variables x , x , . . . x  and an error term is:
           variables x , x , . . . x  and an error term is:
                       1  2       p
                       1  2       p
                y =   +  x  +  x +. . . +  x  + 
                                                        
                y =   +  x  +  x +. . . +  x  + 
                       0     1 1     2 2            p p
                       0     1 1     2 2             p p
           where:
           where:
            ,  ,  , . . . ,   are the parameters, and
                          
             0,  1,  2, . . . ,  p are the parameters, and
              0  1   2          p
             is a random variable called the error term
             is a random variable called the error term
                                                                           
                                                                           
   © 2008  Thomson South-Western.  All Rights Reserved
   © 2008  Thomson South-Western.  All Rights Reserved                3
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               Multiple Regression Equation
               Multiple Regression Equation
       Multiple Regression Equation
        Multiple Regression Equation
               The equation that describes how the 
               The equation that describes how the 
          mean value of y is related to x , x , . . . x  
          mean value of y is related to x , x , . . . x  
                                             1  2       p
                                             1  2       p
          is:
          is:
               E(y) =   +  x +  x + . . . +  x
                                               
               E(y) =   +  x +  x + . . . +  x
                        0    1 1     2 2           p p
                        0    1 1     2 2           p p
                                                                     
                                                                     
   © 2008  Thomson South-Western.  All Rights Reserved
   © 2008  Thomson South-Western.  All Rights Reserved          4
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        Estimated Multiple Regression Equation
        Estimated Multiple Regression Equation
    
       Estimated Multiple Regression Equation
       Estimated Multiple Regression Equation
                    ^
                    ^
                y = b  + b x + b x + . . . + b x
                y = b  + b x + b x + . . . + b x
                       0    1 1     2 2            p p
                       0    1 1     2 2            p p
         A simple random sample is used to compute 
         A simple random sample is used to compute 
         sample statistics b , b , b , . . . , b  that are 
         sample statistics b , b , b , . . . , b  that are 
                              0   1   2         p
                               0  1   2         p
         used as the point estimators of the parameters 
         used as the point estimators of the parameters 
          ,  ,  , . . . ,  .
                       
          0,  1,  2, . . . ,  p.
          0   1  2         p
                                                                     
                                                                      
   © 2008  Thomson South-Western.  All Rights Reserved
   © 2008  Thomson South-Western.  All Rights Reserved           5
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                        Estimation Process
                        Estimation Process
           Multiple Regression Model
           Multiple Regression Model
                                                      Sample Data:
  E(y) =   +  x +  x +. . .+  x  +               Sample Data:
                                            
   E(y) =   +  x +  x +. . .+  x  + 
             0     1 1     2 2           p p
             0     1 1     2 2           p p         x   x   . . .  x    y
                                                     x   x   . . .  x    y
                                                      1   2       p
         Multiple Regression Equation                 1   2       p
         Multiple Regression Equation
                                                    .     .          .     .
     E(y) =   +  x +  x +. . .+  x              .     .          .     .
                                      
     E(y) =     +  x +  x +. . .+  x  
              0     1 1     2 2           p p
              0     1 1     2 2           p p       .     .          .     .
                                                    .     .          .     .
           Unknown parameters are                             
           Unknown parameters are                             
                ,  ,  , . . . , 
                               
                 0,  1,  2, . . . ,  p
                 0   1   2         p
                                           Estimated Multiple
                                           Estimated Multiple
                                          Regression Equation
         b , b , b , . . . , b            Regression Equation
         b , b , b , . . . , b
          0   1   2          p
          0   1    2         p          ˆ
                                        ˆ
                                       yb bx bx ...bx
                                       yb bx bx ...bx
                                            0    1 1   2 2        p p
       provide estimates of                 0    1 1   2 2        p p
        provide estimates of
          ,  ,  , . . . ,            Sample statistics are
                                     Sample statistics are
          0,  1,  2, . . . ,  p
          0   1   2          p
                                            b , b , b , . . . , b
                                            b , b , b , . . . , b
                                             0   1   2          p 
                                             0   1   2          p 
                                                                           
                                                                           
   © 2008  Thomson South-Western.  All Rights Reserved
   © 2008  Thomson South-Western.  All Rights Reserved                6
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...Chapter multiple regression model least squares method coefficient of determination assumptions testing for significance using the estimated equation estimation and prediction qualitative independent variables residual analysis logistic thomson south western all rights reserved slide that describes how dependent variable y is related to x an error term p where are parameters a random called mean value e b simple sample used compute statistics as point estimators process data unknown yb bx provide estimates...

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