概率预测
概率逻辑
校准
计算机科学
非参数统计
参数统计
概率分布
评分规则
背景(考古学)
直方图
数据挖掘
机器学习
人工智能
数学
统计
生物
图像(数学)
古生物学
作者
Tilmann Gneiting,Matthias Katzfuß
标识
DOI:10.1146/annurev-statistics-062713-085831
摘要
A probabilistic forecast takes the form of a predictive probability distribution over future quantities or events of interest. Probabilistic forecasting aims to maximize the sharpness of the predictive distributions, subject to calibration, on the basis of the available information set. We formalize and study notions of calibration in a prediction space setting. In practice, probabilistic calibration can be checked by examining probability integral transform (PIT) histograms. Proper scoring rules such as the logarithmic score and the continuous ranked probability score serve to assess calibration and sharpness simultaneously. As a special case, consistent scoring functions provide decision-theoretically coherent tools for evaluating point forecasts. We emphasize methodological links to parametric and nonparametric distributional regression techniques, which attempt to model and to estimate conditional distribution functions; we use the context of statistically postprocessed ensemble forecasts in numerical weather prediction as an example. Throughout, we illustrate concepts and methodologies in data examples.
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