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picture1_Linear Regression Ppt 69160 | Gerstman Pp15


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File: Linear Regression Ppt 69160 | Gerstman Pp15
in chapter 15 15 1 the general idea 15 2 the multiple regression model 15 3 categorical explanatory variables 15 4 regression coefficients basic biostat 15 multiple linear regression 2 ...

icon picture PPT Filetype Power Point PPT | Posted on 29 Aug 2022 | 3 years ago
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          In Chapter 15:
       15.1 The General Idea
       15.2 The Multiple Regression Model
       15.3 Categorical Explanatory Variables 
       15.4 Regression Coefficients
       [15.5 ANOVA for Multiple Linear Regression]
       [15.6 Examining Conditions]
       [Not covered in recorded presentation]
       Basic Biostat                       15: Multiple Linear Regression                                  2
               15.1 The General Idea
       Simple regression considers the relation 
       between a single explanatory variable and 
       response variable
       Basic Biostat                       15: Multiple Linear Regression                                  3
              The General Idea
    Multiple regression simultaneously considers the 
    influence of multiple explanatory variables on a 
    response variable Y
                                 The intent is to look at 
                                 the independent effect 
                                 of each variable while 
                                 “adjusting out” the 
                                 influence of potential 
                                 confounders
    Basic Biostat       15: Multiple Linear Regression      4
             Regression Modeling
      •  A simple regression 
         model (one independent 
         variable) fits a regression 
         line in 2-dimensional 
         space
      •  A multiple regression 
         model with two 
         explanatory variables fits 
         a regression plane in 3-
         dimensional space
      Basic Biostat             15: Multiple Linear Regression                  5
             Simple Regression Model
                                                                       2
       Regression coefficients are estimated by minimizing ∑residuals  (i.e., sum of the squared 
       residuals) to derive this model:
       The standard error of the regression (s ) is 
                                                                                    Y|x
       based on the squared residuals:
       Basic Biostat                    15: Multiple Linear Regression                              6
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...In chapter the general idea multiple regression model categorical explanatory variables coefficients basic biostat linear simple considers relation between a single variable and response simultaneously influence of on y intent is to look at independent effect each while adjusting out potential confounders modeling one fits line dimensional space with two plane are estimated by minimizing residuals i e sum squared derive this standard error s x based...

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