分位数评估、对区间划分的敏感性以及商业收益分享

Quantile Evaluation, Sensitivity to Bracketing, and Sharing Business Payoffs

Operations Research · 2017
被引 42
FT 50UTD 24ABS 4★

中文导读

研究了如何评估多个分位数预测,提出评分规则应对预测者分位数区间划分敏感,并展示了如何设定权重以匹配商业收益分享。

Abstract

From forecasting competitions to conditional value-at-risk requirements, the use of multiple quantile assessments is growing in practice. To evaluate them, we use a rule from the general class of proper scoring rules for a forecaster’s multiple quantiles of a single uncertain quantity of interest. The general rule is additive in the component scores. Each component contains a function that measures its quantile’s distance from the realization and weights its contribution to the overall score. To determine this function, we propose that the score of a group’s combined quantile should be better than that of a randomly selected forecaster’s quantile only when the forecasters bracket the realization (i.e., their quantiles do not fall on the same side of the realization). If a score satisfies this property, we say it is sensitive to bracketing. We characterize the class of proper scoring rules that is sensitive to bracketing when the decision maker uses a generalized average to combine forecasters’ quantiles. Finally, we show how weights can be set to match the payoffs in many important business contexts.

预测评估分位数评分规则风险管理商业决策