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Econ 427 lecture 2 slides Byron Gangnes Lecture 2. Jan. 13, 2010 • Anyone need syllabus? • See pdf EViews documentation on CDRom • Problem set 1 will be available by Tues at the latest. Byron Gangnes The forecasting problem • • You’re given a forecasting assignment. What things do you need to consider before deciding how to develop your forecast? Diebold’s 6 considerations for successful forecasting Byron Gangnes The decision environment • How will the forecast be used? What will constitute a “good” forecast? – What are the implications of making forecast errors? • • • How large are the costs of errors? Are they symmetric? An optimal forecast will be one that minimizes expected losses. Byron Gangnes Loss functions Error e y yφ L(e) Loss What characteristics would you expect a loss function to have? Types of loss functions Lossfunction.xls • • • • – – Absolute loss Quadratic loss • – • Why is this one appealing/convenient? Asymmetric loss functions How do you decide which to use? Byron Gangnes Measures of Forecast Fit • Making it concrete: some common measures of forecast fit – Notation: error of a forecast made at time t of period t+h is: et h,t yt h yt h,t Byron Gangnes Measures of Forecast Fit – Mean absolute error MAE is 1 T MAE et h,t T t 1 – Mean squared error MSE is 1 T 2 MSE et h,t T t 1 • (see pp 260-262 in book) – Look at my MAE/MSE forecast comparison example MaeMseExample_Mine.xls Byron Gangnes Measures of Forecast Fit – Do they give the same ranking? Need they always? – Would you want to use in-sample data for this? Byron Gangnes The forecast object • What kind of object are we trying to forecast? – – – – – Event outcome Event timing *Time series What are examples of each? Other considerations: availability and quality of data Byron Gangnes The forecast statement • What sort of forecast of that object do we want? – Point forecast – Interval forecast – Density forecast Byron Gangnes The forecast horizon • How far into the future do we need to predict? – The “h-step-ahead forecast” • also, h-step-ahead extrapolative forecasts – Likely dependence of optimal forecasting model on fcst horizon Byron Gangnes The information set. • What do we know that can inform the forecast? multivariate T univariate T yT , yT 1 ,..., y1 yT , xT , yT 1 , xT 1 ,..., y1 , x1 Byron Gangnes Optimal model complexity • The parsimony principle – more accurate param ests, easier interp, easier to commun intuition, avoids data mining • The shrinkage principle – imposing restriction—sometimes even if wrong!—can improve forecast performance • The KISS principle – Keep it sophisticatedly simple Byron Gangnes Next time… • Read Chapter 2 carefully before class. Byron Gangnes