Forecast Rationality Tests Based on Multi-Horizon Bounds
نویسندگان
چکیده
Forecast rationality under squared error loss implies various bounds on second moments of the data across forecast horizons. For example, the mean squared forecast error should be increasing in the horizon, and the mean squared forecast should be decreasing in the horizon. We propose rationality tests based on these restrictions, including new ones that can be conducted without data on the target variable, and implement them via tests of inequality constraints in a regression framework. A new test of optimal forecast revision based on a regression of the target variable on the long-horizon forecast and the sequence of interim forecast revisions is also proposed. The size and power of the new tests are compared with those of extant tests through Monte Carlo simulations. An empirical application to the Federal Reserve’s Greenbook forecasts is presented.
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Comment on 'forecast Rationality Tests Based on Multi-horizon Bounds'
I enjoyed reading yet another paper by Patton and Timmermann (PT hereinafter) and feel that it has broken new ground in testing the rationality of a sequence of multi-horizon fixed target forecasts. Rationality tests are not new in the forecasting literature, but the idea of testing the monotonicity properties of second moment bounds across several horizons is novel and can suggest possible sou...
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