This paper introduces an objective for optimizing proper scoring rules. The objective is to maximize the increase in payoff of a forecaster who exerts a binary level of effort to refine a posterior belief from a prior belief. In this framework we characterize optimal scoring rules in simple settings, give efficient algorithms for computing optimal scoring rules in complex settings, and identify simple scoring rules that are approximately optimal. In comparison, standard scoring rules in theory and practice -- for example the quadratic rule, scoring rules for the expectation, and scoring rules for multiple tasks that are averages of single-task scoring rules -- can be very far from optimal.
翻译:本文介绍了优化适当评分规则的目标。 目标是最大限度地提高一位预测员的回报率,他努力从先前的信念中完善后人信仰。 在这个框架中,我们把最佳评分规则描述为简单环境的最佳评分规则,为在复杂环境中计算最佳评分规则提供高效的算法,并找出基本最佳的简单评分规则。相比之下,标准评分规则在理论和实践上可能远非最理想,例如二次评分规则、预期评分规则、单项评分规则等多项任务评分规则。