Strictly proper scoring rules, including the Brier score and the logarithmic score, are standard metrics bywhich probability forecasters are assessed and compared. Researchers often find that one’s choice of strictly proper scoring rule has minimal impact on one’s conclusions, but this conclusion is typically drawn from a small set of popular rules. In the context of forecasting world events, we use a recently proposed family of proper scoring rules to study the properties of a wide variety of strictly proper rules. The results indicate that conclusions vary greatly across different scoring rules, so that one’s choice of scoring rule should be informed by the forecasting domain. We then describe strategies for choosing a scoring rule that m...
Scoring rules measure the deviation between a probabilistic forecast and reality. Strictly proper sc...
This is the author accepted manuscript. The final version is available from Wiley via the DOI in thi...
<p> Probability forecasts play an important role in many decision and risk analysis applications. Re...
Proper and strictly proper scoring rules provide a rigorous method for evaluating the accuracy of a ...
When scoring rules were first widely used, they were developed as a way to measure the accuracy of p...
Scoring rules are an important tool for evaluating the performance of probabilistic forecasting sche...
There are several scoring rules that one can choose from in order to score probabilistic forecasting...
Ascoring rule S(x; q) provides away of judging the quality of a quoted probability density q for a r...
Proper scoring rules can be used to incentivize a forecaster to truthfully report her private belie...
The evaluation of probabilistic forecasts plays a central role both in the interpretation and in the...
This note gives an easily verified necessary and sufficient condition for one probability forecaster...
Questions remain regarding how the skill of operational probabilistic forecasts is most usefully eva...
We give a new example for a proper scoring rule motivated by the form of Anderson-Darling distance o...
Scoring rules promote rational and good decision making and predictions by models, this is increasin...
Forecasting of risk measures is an important part of risk management for financial institutions. Va...
Scoring rules measure the deviation between a probabilistic forecast and reality. Strictly proper sc...
This is the author accepted manuscript. The final version is available from Wiley via the DOI in thi...
<p> Probability forecasts play an important role in many decision and risk analysis applications. Re...
Proper and strictly proper scoring rules provide a rigorous method for evaluating the accuracy of a ...
When scoring rules were first widely used, they were developed as a way to measure the accuracy of p...
Scoring rules are an important tool for evaluating the performance of probabilistic forecasting sche...
There are several scoring rules that one can choose from in order to score probabilistic forecasting...
Ascoring rule S(x; q) provides away of judging the quality of a quoted probability density q for a r...
Proper scoring rules can be used to incentivize a forecaster to truthfully report her private belie...
The evaluation of probabilistic forecasts plays a central role both in the interpretation and in the...
This note gives an easily verified necessary and sufficient condition for one probability forecaster...
Questions remain regarding how the skill of operational probabilistic forecasts is most usefully eva...
We give a new example for a proper scoring rule motivated by the form of Anderson-Darling distance o...
Scoring rules promote rational and good decision making and predictions by models, this is increasin...
Forecasting of risk measures is an important part of risk management for financial institutions. Va...
Scoring rules measure the deviation between a probabilistic forecast and reality. Strictly proper sc...
This is the author accepted manuscript. The final version is available from Wiley via the DOI in thi...
<p> Probability forecasts play an important role in many decision and risk analysis applications. Re...