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Reverse Regression and Employment Discrimination
Authors:Stephan Michelson  Gail Blattenberger
Affiliation:1. Econometric Research, Inc. , Washington , DC , 20005;2. Department of Economics , University of Utah , Salt Lake City , UT , 84112
Abstract:The importance of interval forecasts is reviewed. Several general approaches to calculating such forecasts are described and compared. They include the use of theoretical formulas based on a fitted probability model (with or without a correction for parameter uncertainty), various “approximate” formulas (which should be avoided), and empirically based, simulation, and resampling procedures. The latter are useful when theoretical formulas are not available or there are doubts about some model assumptions. The distinction between a forecasting method and a forecasting model is expounded. For large groups of series, a forecasting method may be chosen in a fairly ad hoc way. With appropriate checks, it may be possible to base interval forecasts on the model for which the method is optimal. It is certainly unsound to use a model for which the method is not optimal, but, strangely, this is sometimes done. Some general comments are made as to why prediction intervals tend to be too narrow in practice to encompass the required proportion of future observations. An example demonstrates the overriding importance of careful model specification. In particular, when data are “nearly nonstationary,” the difference between fitting a stationary and a nonstationary model is critical.
Keywords:Bayesian forecasting  Bootstrapping  Box–Jenkins method  Forecasting  Holt–Winters method  Prediction intervals  Resampling  Simulation
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