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Multiple Regression Forecasts

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Statistically significant betas for Trend (years variable) and Price ... Multiply Betas by their respective X's. Forecast Acres for alternative Prices and CRP ... – PowerPoint PPT presentation

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Title: Multiple Regression Forecasts


1
Multiple Regression Forecasts
  • Materials for this lecture
  • Demo
  • Lecture 3 Multiple Regression.XLS
  • Read Chapter 15 Pages 8-9
  • Read all of Chapter 16s Section 13

2
Multiple Regression Forecasts
  • Structural model of the forecast variable used
    when suggested by
  • Economic theory
  • Knowledge of the industry
  • Relationship to other variables
  • Economic model is being developed
  • Examples
  • Forecast planted acres for a crop
  • Forecast demand for a product
  • Forecast annual price of corn or cattle
  • Forecast government payments for a crop
  • Forecast exports or trade flows

3
Multiple Regression Forecasts
  • Structural model
  • Y a b1 X1 b2 X2 b3 X3 b4 X4 e
  • Where Xi are exogenous variables that explain the
    variation of Y over the historical period
  • Estimate parameters (a, bis, and SEP) using
    multiple regression (OLS)
  • OLS is preferred because it minimizes the sum of
    squared residuals
  • This is the same as reducing the risk on Y as
    much as possible, i.e., minimizing the risk on
    the forecast

4
Multiple Regression Model
5
Steps to Build Multiple Regression Models
  • Plot the Y variable in search of trend,
    seasonal, cyclical and irregular variation
  • Plot Y vs. each X to see the structural
    relationship and how X may explain Y calculate
    correlation coefficients
  • Hypothesize the model equation(s) with all likely
    Xs to explain the Y, based on knowledge of model
    theory
  • Forecasting wheat production, model is
  • Plt Act f(E(Pricet), Plt Act-1, E(PthCropt),
    Trend, Yieldt-1)
  • Harvested Act a b Plt Act
  • Yieldt a b Tt
  • Prodt Harvested Act Yieldt
  • Estimate and re-estimate the model
  • Make the deterministic forecast
  • Make the forecast stochastic for a probabilistic
    forecast

6
US Planted Wheat Acreage Model
  • Plt Act f(E(Pricet), Yieldt-1, CRPt, Yearst)
  • Statistically significant betas for Trend (years
    variable) and Price
  • Leave CRP in model because of policy analysis and
    it has the correct sign
  • Use Trend (years) over Yieldt-1, Trend masks the
    effects of Yield

7
Multiple Regression Forecasts
  • Specify alternative values for X and forecast the
    Deterministic Component
  • Multiply Betas by their respective Xs
  • Forecast Acres for alternative Prices and CRP
  • Lagged Yield and Year are constant in scenarios

8
Multiple Regression Forecasts
  • Probabilistic forecast uses YTI and SEP or Std
    Dev and assume a normal distrib. for residuals
  • ?Ti YTi SEP NORM()
  • or
  • ?Ti NORM(YTi , SEP)

9
Multiple Regression Forecasts
  • Present probabilistic forecast as a PDF with 95
    Confidence Interval shown here as the bars about
    the mean in a probability density function (PDF)

10
Growth Forecasts
  • Some data display a growth pattern
  • Easy to forecast with multiple regression
  • Add an X variable to capture the growth or decay
    of Y variable
  • Growth function
  • Y a b1Tb2T2
  • Log(Y) a b1 Log(T) Double Log
  • Log(Y) a b1 T Single Log
  • See Decay Function worksheet for several
    examples for handleing this problem

11
Multiple Regression Forecasts
Single Log Form Log (Yt) b0 b1 T
Double Log Form Log (Yt) b0 b1 Log (T)
12
Decay Function Forecasts
  • Some data display a decay pattern
  • Forecast them with multiple regression
  • Add an X variable to capture the growth or decay
    of forecast variable
  • Decay function
  • Y a b1(1/T) b2(1/T2)

13
Forecasting Growth or Decay Patterns
  • Here is the regression result for estimating a
    decay function
  • Yt a b1 (1/Xt)
  • or
  • Yt a b1 (1/Xt) b2 (1/Xt2)

14
Multiple Regression Forecasts
  • Examine a structural regression model that
    contains Trend and an X
  • Y a b1T b2It does not explain all of the
    variability, a seasonal or cyclical variability
    may be present, if so need to remove its effect

15
Goodness of Fit Measures
  • Models with high R2 may not forecast well
  • If add enough Xs can get high R2
  • R-Bar2 is preferred as it is not affected by no.
    Xs
  • Selecting based on highest R2 same as using
    minimum Mean Squared Error
  • MSE (? et2)/T

16
Goodness of Fit Measures
  • R-Bar2 takes into account the effect of adding Xs
  • where s2 is the unbiased estimator of the
    regression residuals
  • and k represents the number of Xs in the model

17
Goodness of Fit Measures
  • Akaike Information Criterion (AIC)
  • Schwarz Information Criterion (SIC)
  • For T 100 and k goes from 1 to 25
  • The SIC affords the greatest penalty for just
    adding Xs.
  • The AIC is second best and the R2 would be the
    poorest.

18
Goodness of Fit Measures
  • Summary of goodness of fit measures
  • SIC, AIC, and S2 are sensitive to both k and T
  • The S2 is small and rises slowly as k/T increases
  • AIC and SIC rise faster as k/T increases
  • SIC is most sensitive to k/T increases

19
Goodness of Fit Measures
  • MSE works best to determine best model for in
    sample forecasting
  • R2 does not penalize for adding ks
  • R-Bar2 is based on S2 so it provides some penalty
    as k increases
  • AIC is better then R2 but SIC results in the most
    parsimonious models (fewest ks)
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