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Chapter 12: Regression Diagnostics
E370, Spring 2016
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Assumptions Data Data Accuracy Measurement accuracy Outliers
Observations that may dramatically affect the results of a regression Model Linear relationship The dependent variable is related with the independent variables in a linear fashion. Absence of Multicollinearity Independent variables are not highly correlated with each other
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Data Check Check range, mean and other descriptive statistics for data accuracy Outliers: Too far of the predicted value--- Standardized residuals’ absolute value higher than 3 Influential outliers: whose exclusion dramatically changed the coefficients.
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Absence of Multicollinearity
Check pair-wise correlation coefficients Correlation coefficients higher than 0.8 indicate multicollinearity
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Assumptions Error Normality Normally distributed error term
Errors cancel on average Error centered at 0 Homoscedasticity Errors have a constant variance over the full range of the dependent variable.
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Normally Distributed Error Centered around Zero
Histogram of residuals
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Homoscedasticity Scatter plot of residuals and predicted values of dependent variable
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