Evaluation of forecast optimality in economics and finance has almost exclusively been conducted on the assumption of mean squared error loss under which forecasts should be unbiased and forecast errors serially uncorrelated at the single period horizon with increasing variance as the forecast horizon grows. This paper considers properties of optimal forecasts under general loss functions and establishes new testable implications of forecast optimality. These hold when the forecaster’s loss function is unknown but testable restrictions can be imposed on the data generating process, trading off conditions on the data generating process against conditions on the loss function. Finally, we propose flexible parametric estimation of the forecast...
The paper explores probability theory foundations behind evaluation of probabilistic forecasts. The ...
Survey data on expectations frequently find evidence that forecasts are biased, rejecting the joint ...
Loss function asymmetry and forecast optimality: Evidence from individual analysts ’ forecast
Evaluation of forecast optimality in economics and finance has almost exclusively been conducted und...
Empirical tests of forecast optimality have traditionally been conducted under the assumption of mea...
Evaluation of forecast optimality in economics and Þnance has almost exclusively been con-ducted und...
Evaluation of forecast optimality in economics and Þnance has almost exclusively been conducted unde...
Forecast is pervasive in all areas of applications in business and daily life and, hence, evaluating...
Official forecasts of international institutions are never purely model-based. Preliminary results o...
In situations where a sequence of forecasts is observed, a common strategy is to examine “rationali...
In situations where a sequence of forecasts is observed, a common strategy is to examine "rationalit...
This paper proposes forecast optimality tests that can be used in unstable environments. They includ...
The signs of forecast errors can be predicted using the difference between individuals' forecasts an...
Forecast accuracy is typically measured in terms of a given loss function. However, as a consequence...
Systematically biased forecasts are typically interpreted as evidence of forecasters' irrationality ...
The paper explores probability theory foundations behind evaluation of probabilistic forecasts. The ...
Survey data on expectations frequently find evidence that forecasts are biased, rejecting the joint ...
Loss function asymmetry and forecast optimality: Evidence from individual analysts ’ forecast
Evaluation of forecast optimality in economics and finance has almost exclusively been conducted und...
Empirical tests of forecast optimality have traditionally been conducted under the assumption of mea...
Evaluation of forecast optimality in economics and Þnance has almost exclusively been con-ducted und...
Evaluation of forecast optimality in economics and Þnance has almost exclusively been conducted unde...
Forecast is pervasive in all areas of applications in business and daily life and, hence, evaluating...
Official forecasts of international institutions are never purely model-based. Preliminary results o...
In situations where a sequence of forecasts is observed, a common strategy is to examine “rationali...
In situations where a sequence of forecasts is observed, a common strategy is to examine "rationalit...
This paper proposes forecast optimality tests that can be used in unstable environments. They includ...
The signs of forecast errors can be predicted using the difference between individuals' forecasts an...
Forecast accuracy is typically measured in terms of a given loss function. However, as a consequence...
Systematically biased forecasts are typically interpreted as evidence of forecasters' irrationality ...
The paper explores probability theory foundations behind evaluation of probabilistic forecasts. The ...
Survey data on expectations frequently find evidence that forecasts are biased, rejecting the joint ...
Loss function asymmetry and forecast optimality: Evidence from individual analysts ’ forecast