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picture1_Linear Regression Ppt 69174 | Chapter 18


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File: Linear Regression Ppt 69174 | Chapter 18
introduction in this chapter we extend the simple linear regression model any number of independent variables is now allowed we wish to build a model that fits the data better ...

icon picture PPT Filetype Power Point PPT | Posted on 29 Aug 2022 | 3 years ago
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  Introduction
  • In this chapter, we extend the simple linear 
   regression model. Any number of independent 
   variables is now allowed.
  • We wish to build a model that fits the data better 
   than the simple linear regression model.
   • Computer printout is used to help us: 
     – Assess/Validate the model
      • How well does it fit the data?
      • Is it useful?
      • Are any of the required conditions violated?
     – Apply the model
      • Interpreting the coefficients
      • Estimating the expected value of the dependent variable
        Model and Required Conditions
        • We allow for k independent variables to 
           potentially be related to the dependent variable
                                    Coefficients          Random error variable
                   Y =   +  X +  X  + …+  X  + 
                           0     1  1     2  2            k  k
        Dependent variable          Independent variables
                   Multiple Regression for k = 2,
                           Graphical Demonstration
                                  Y         The simple linear regression model
                                            allows for one independent variable, “X”
                                                           Y = 0 + 1X + 
                                                   X               X
                                               +
                                                  1              1
                                         =                     +
                                                               
     Note how the straight line       Y      0              
                                                          =  0                             X2
                                                       Y                               + 2
                                                                                    X 
      becomes a plane                                                            1 1
                                                                               +
                                                                            
                                                                         =  0
                                                                       Y
                                                     X2                   X
                                                  + 2                        2
                                                                         2
                                               X                      +
                                            1 1                   X 
                                         +                           1
                                                                1
                                                             +
                                    =  0                   
                                 Y                      =  0                  X
                                                      Y                         1
                                  The multiple linear regression model
                                  allows for more than one independent variable.
                                  Y =   +  X  +  X  + 
                                        0    1 1    2 2 
          X
            2
     Required Conditions for the Error Variable
     • The error is normally distributed.
     • The mean is equal to zero and the standard 
       deviation is constant ( for all possible values 
                             
       of the Xis.
     • All errors are independent.
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...Introduction in this chapter we extend the simple linear regression model any number of independent variables is now allowed wish to build a that fits data better than computer printout used help us assess validate how well does it fit useful are required conditions violated apply interpreting coefficients estimating expected value dependent variable and allow for k potentially be related random error y x multiple graphical demonstration allows one note straight line becomes plane more normally distributed mean equal zero standard deviation constant all possible values xis errors...

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