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picture1_Standard Deviation Ppt 68972 | Chapter 14 Multiple Regression


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File: Standard Deviation Ppt 68972 | Chapter 14 Multiple Regression
multiple regression the simple linear regression model was used to analyze how one interval variable the dependent variable y is related to one other interval variable the independent variable x ...

icon picture PPTX Filetype Power Point PPTX | Posted on 29 Aug 2022 | 3 years ago
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                 Multiple Regression…
     • The simple linear regression model was used 
       to analyze how one interval variable 
        –the dependent variable y is related to one other 
          interval variable 
        –the independent variable x.
     • Multiple regression allows for any number of 
       independent variables.
     • We expect to develop models that fit the data 
       better than a simple linear regression model.
     08/29/2022              Towson University - J. Jung         2
                            The Model…
     •  We now assume we have k independent variables potentially 
        related to the one dependent variable. This relationship is 
        represented in this first order linear equation:
         dependent          independent variables
           variable
                                                            error variable
                              coefficients
     •  In the one variable, two dimensional case we drew a 
        regression line; here we imagine a response surface.
     08/29/2022                  Towson University - J. Jung               3
            Required Conditions for OLS
     For these regression methods to be valid the following three 
     •  
     conditions for the error variable must be met:
     1. The mean of the distribution is 0 so that  
     2. The standard deviation of is is constant regardless of the 
         value of x
     3. The value of associated with any particular value of y is 
         independent of associated with any other value of y
     4. Regressors in X must all be linearly independent
     In addition: If the distribution of  is normal, the OLS estimates 
     are efficient i.e. the procedure works really well
     08/29/2022                  Towson University - J. Jung              4
           Estimating the Coefficients…
     • The sample regression equation is expressed as:
     • We will use computer output to:
     • Assess the model…
        –How well it fits the data
        –Is it useful
        –Are any required conditions violated?
     • Employ the model…
        –Interpreting the coefficients
        –Predictions using the prediction equation
        –Estimating the expected value of the dependent variable
     08/29/2022               Towson University - J. Jung           5
       Regression Analysis Steps…
     u Use a computer and software to generate the 
        coefficients and the statistics used to assess the 
        model.
     v Diagnose violations of required conditions. If there 
        are problems, attempt to remedy them.
     w Assess the model’s fit.
        –standard error of estimate, 
        –coefficient of determination (R2). 
     x If u, v, and w are OK, use the model to predict or 
        estimate the expected value of the dependent 
        variable.
     08/29/2022                 Towson University - J. Jung            6
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...Multiple regression the simple linear model was used to analyze how one interval variable dependent y is related other independent x allows for any number of variables we expect develop models that fit data better than a towson university j jung now assume have k potentially this relationship represented in first order equation error coefficients two dimensional case drew line here imagine response surface required conditions ols these methods be valid following three must met mean distribution so standard deviation constant regardless value associated with particular regressors all linearly addition if normal estimates are efficient i e procedure works really well estimating sample expressed as will use computer output assess it fits useful violated employ interpreting predictions using prediction expected analysis steps u and software generate statistics v diagnose violations there problems attempt remedy them w s estimate coefficient determination r ok predict or...

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