This paper introduces a complement statistical test for distinguishing between the predictive accuracy of two sets of forecasts. We propose a non-parametric test founded upon the principles of the Kolmogorov-Smirnov (KS) test, referred to as the KS Predictive Accuracy (KSPA) test. The KSPA test is able to serve two distinct purposes. Initially, the test seeks to determine whether there exists a statistically significant difference between the distribution of forecast errors, and secondly it exploits the principles of stochastic dominance to determine whether the forecasts with the lower error also reports a stochastically smaller error than forecasts from a competing model, and thereby enables distinguishing between the predictive accuracy ...
We propose a procedure for estimating the critical values of the extended Kolmogorov-Smirnov tests o...
There is a vast literature that has been focusing on testing the forecasting performance of various ...
Forecast accuracy is typically measured in terms of a given loss function. However, as a consequence...
This paper introduces a complement statistical test for distinguishing between the predictive accura...
One popular method for testing the validity of a model's forecasts is to use the probability integra...
Given two sources of forecasts of the same quantity, it is possible to compare prediction records. I...
Tests for relative predictive accuracy have become a widespread adden-dum to forecast comparisons. M...
We argue that the current framework for predictive ability testing (e.g., West, 1996) is not necessa...
A rapidly growing literature emphasizes the importance of evaluating the forecast accuracy of empiri...
To select a forecast model among competing models, researchers often use ex-ante prediction experime...
This paper develops bootstrap methods for testing, whether, in a finite sample, competing out-of-sam...
In recent years, an impressive body or research on predictive accuracy testing and model comparison ...
In this paper a forecasting model selection scheme is considered which amounts to testing the predic...
In this paper, we propose a correlation-based test for the evaluation of two competing forecasts. Un...
This paper introduces a conditional Kolmogorov test, in the spirit of Andrews (1997), that allows fo...
We propose a procedure for estimating the critical values of the extended Kolmogorov-Smirnov tests o...
There is a vast literature that has been focusing on testing the forecasting performance of various ...
Forecast accuracy is typically measured in terms of a given loss function. However, as a consequence...
This paper introduces a complement statistical test for distinguishing between the predictive accura...
One popular method for testing the validity of a model's forecasts is to use the probability integra...
Given two sources of forecasts of the same quantity, it is possible to compare prediction records. I...
Tests for relative predictive accuracy have become a widespread adden-dum to forecast comparisons. M...
We argue that the current framework for predictive ability testing (e.g., West, 1996) is not necessa...
A rapidly growing literature emphasizes the importance of evaluating the forecast accuracy of empiri...
To select a forecast model among competing models, researchers often use ex-ante prediction experime...
This paper develops bootstrap methods for testing, whether, in a finite sample, competing out-of-sam...
In recent years, an impressive body or research on predictive accuracy testing and model comparison ...
In this paper a forecasting model selection scheme is considered which amounts to testing the predic...
In this paper, we propose a correlation-based test for the evaluation of two competing forecasts. Un...
This paper introduces a conditional Kolmogorov test, in the spirit of Andrews (1997), that allows fo...
We propose a procedure for estimating the critical values of the extended Kolmogorov-Smirnov tests o...
There is a vast literature that has been focusing on testing the forecasting performance of various ...
Forecast accuracy is typically measured in terms of a given loss function. However, as a consequence...