Most of the methods nowadays employed in forecast problems are based on scoring rules. There is a divergence function associated to each scoring rule, that can be used as a measure of discrepancy between probability distributions. This approach is commonly used in the literature for comparing two competing predictive distributions on the basis of their relative expected divergence from the true distribution. In this paper we focus on the use of scoring rules as a tool for finding predictive distributions for an unknown of interest. The proposed predictive distributions are asymptotic modifications of the estimative solutions, obtained by minimizing the expected divergence related to a general scoring rule. The asymptotic properties of...
A scoring rule is a principled way of assessing a probabilistic forecast. The key requirement of a s...
The evaluation of probabilistic forecasts plays a central role both in the interpretation and in the...
We consider constructing probability forecasts from a parametric binary choice model under a large f...
Most of the methods nowadays employed in forecast problems are based on scoring rules. There is a di...
We give a new example for a proper scoring rule motivated by the form of Anderson--Darling distance ...
Proper scoring rules are devices for encouraging honest assessment of probability distributions. Jus...
A scoring rule is a device for eliciting and assessing probabilistic forecasts from an agent. When d...
<p> Probability forecasts play an important role in many decision and risk analysis applications. Re...
There are several scoring rules that one can choose from in order to score probabilistic forecasting...
We develop two surprising new results regarding the use of proper scoring rules for evaluating the p...
We consider the design of proper scoring rules, equivalently proper losses, when the goal is to elic...
Ascoring rule S(x; q) provides away of judging the quality of a quoted probability density q for a r...
In this paper, we introduce a novel objective prior distribution levering on the connections between...
Scoring rules measure the deviation between a probabilistic forecast and reality. Strictly proper sc...
Abstract. In this paper we present lessons learned in the Evaluating Predictive Uncertainty Challeng...
A scoring rule is a principled way of assessing a probabilistic forecast. The key requirement of a s...
The evaluation of probabilistic forecasts plays a central role both in the interpretation and in the...
We consider constructing probability forecasts from a parametric binary choice model under a large f...
Most of the methods nowadays employed in forecast problems are based on scoring rules. There is a di...
We give a new example for a proper scoring rule motivated by the form of Anderson--Darling distance ...
Proper scoring rules are devices for encouraging honest assessment of probability distributions. Jus...
A scoring rule is a device for eliciting and assessing probabilistic forecasts from an agent. When d...
<p> Probability forecasts play an important role in many decision and risk analysis applications. Re...
There are several scoring rules that one can choose from in order to score probabilistic forecasting...
We develop two surprising new results regarding the use of proper scoring rules for evaluating the p...
We consider the design of proper scoring rules, equivalently proper losses, when the goal is to elic...
Ascoring rule S(x; q) provides away of judging the quality of a quoted probability density q for a r...
In this paper, we introduce a novel objective prior distribution levering on the connections between...
Scoring rules measure the deviation between a probabilistic forecast and reality. Strictly proper sc...
Abstract. In this paper we present lessons learned in the Evaluating Predictive Uncertainty Challeng...
A scoring rule is a principled way of assessing a probabilistic forecast. The key requirement of a s...
The evaluation of probabilistic forecasts plays a central role both in the interpretation and in the...
We consider constructing probability forecasts from a parametric binary choice model under a large f...