Strictly proper scoring rules continue to play an important role in probability assessment. Although manysuch rules have been developed, relatively little guidance exists as to which rule is the most appropriate. In this paper, we discuss two important properties of quadratic, spherical, and logarithmic scoring rules. From an ex post perspective, we compare their rank order properties and conclude that both quadratic and spher-ical scoring perform poorly in this regard, relative to logarithmic. Second, from an ex ante perspective, we demonstrate that in many situations, logarithmic scoring is the method least affected by a nonlinear utility func-tion. These results suggest that logarithmic scoring is superior when rank order results are imp...
In the context of assessing subjective probability distributions, scoring rules can be used for elic...
If a decision maker whose behavior conforms to the max-min expected utility model is faced with a sc...
A scoring rule is a device for eliciting and assessing probabilistic forecasts from an agent. When d...
There are several scoring rules that one can choose from in order to score probabilistic forecasting...
We propose and motivate an expanded version of the logarithmic score for forecasting distributions,...
Ascoring rule S(x; q) provides away of judging the quality of a quoted probability density q for a r...
Shuford, Albert and Massengill proved, a half century ago, that the logarithmic scoring rule is the ...
When scoring rules were first widely used, they were developed as a way to measure the accuracy of p...
The purpose of this paper is to briefly discuss some important current questions and problems relate...
Strictly proper scoring rules, including the Brier score and the logarithmic score, are standard met...
Forecasting of risk measures is an important part of risk management for financial institutions. Va...
Proper scoring rules (PSRs) have been derived to elicit good probability assessments. Because there ...
In this paper, the role of strictly proper quadratic utility measures in Bayesian inference and expe...
In most psychological tests and questionnaires, a test score is obtained by taking the sum of the it...
In the context of assessing subjective probability distributions, scoring rules can be used for elic...
In the context of assessing subjective probability distributions, scoring rules can be used for elic...
If a decision maker whose behavior conforms to the max-min expected utility model is faced with a sc...
A scoring rule is a device for eliciting and assessing probabilistic forecasts from an agent. When d...
There are several scoring rules that one can choose from in order to score probabilistic forecasting...
We propose and motivate an expanded version of the logarithmic score for forecasting distributions,...
Ascoring rule S(x; q) provides away of judging the quality of a quoted probability density q for a r...
Shuford, Albert and Massengill proved, a half century ago, that the logarithmic scoring rule is the ...
When scoring rules were first widely used, they were developed as a way to measure the accuracy of p...
The purpose of this paper is to briefly discuss some important current questions and problems relate...
Strictly proper scoring rules, including the Brier score and the logarithmic score, are standard met...
Forecasting of risk measures is an important part of risk management for financial institutions. Va...
Proper scoring rules (PSRs) have been derived to elicit good probability assessments. Because there ...
In this paper, the role of strictly proper quadratic utility measures in Bayesian inference and expe...
In most psychological tests and questionnaires, a test score is obtained by taking the sum of the it...
In the context of assessing subjective probability distributions, scoring rules can be used for elic...
In the context of assessing subjective probability distributions, scoring rules can be used for elic...
If a decision maker whose behavior conforms to the max-min expected utility model is faced with a sc...
A scoring rule is a device for eliciting and assessing probabilistic forecasts from an agent. When d...