133x Filetype PPT File size 0.29 MB Source: personal.utdallas.edu
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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