1 Econometrics (NA1031) Lecture 4 Prediction, Goodness-of-fit, and Modeling Issues.

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Presentation transcript:

1 Econometrics (NA1031) Lecture 4 Prediction, Goodness-of-fit, and Modeling Issues

2 Prediction The ability to predict is important to: business economists and financial analysts who attempt to forecast the sales and revenues of specific firms government policy makers who attempt to predict the rates of growth in national income, inflation, investment, saving, social insurance program expenditures, and tax revenues local businesses who need to have predictions of growth in neighborhood populations and income so that they may expand or contract their provision of services Accurate predictions provide a basis for better decision making in every type of planning context

3 Figure 4.2 Point and interval prediction

4 Figure 4.3 Explained and unexplained components of y i

5 Goodness of fit Let’s define the coefficient of determination, or R 2, as the proportion of variation in y explained by x within the regression model: Can also be calculated as the squared correlation coefficient between the predicted and actual “y” value.

6 Modelling issues What are the effects of scaling the variables in a regression model? The starting point in all econometric analyses is economic theory What does economics really say about the relation between food expenditure and income, holding all else constant? We expect there to be a positive relationship between these variables because food is a normal good But nothing says the relationship must be a straight line

7 Modelling issues What are the effects of scaling the variables in a regression model? The starting point in all econometric analyses is economic theory What does economics really say about the relation between food expenditure and income, holding all else constant? We expect there to be a positive relationship between these variables because food is a normal good But nothing says the relationship must be a straight line The marginal effect of a change in the explanatory variable is measured by the slope of the tangent to the curve at a particular point

8 Figure 4.4 A nonlinear relationship between food expenditure and income

9 Figure 4.5 Alternative functional forms

10 Table 4.1 Some Useful Functions, their Derivatives, Elasticities and Other Interpretation

11 GUIDELINES FOR CHOOSING A FUNCTIONAL FORM 1.Choose a shape that is consistent with what economic theory tells us about the relationship. 2.Choose a shape that is sufficiently flexible to ‘‘fit’’ the data. 3.Choose a shape so that assumptions SR1–SR6 are satisfied, ensuring that the least squares estimators have the desirable properties described in Chapters 2 and 3

12 Are the Regression Errors Normally Distributed? The Jarque–Bera statistic is given by: where N = sample size S = skewness K = kurtosis

13 Stata Start Stata mkdir C:\PE cd C:\PE copy chap04_15.do doedit chap04_15.do

14 Assignment Exercise 4.12 page 160 in the textbook.