Raftery Adrian E
University of Washington.
Stat Anal Data Min. 2016 Dec;9(6):397-410. doi: 10.1002/sam.11302. Epub 2016 Feb 23.
Probabilistic forecasts are becoming more and more available. How should they be used and communicated? What are the obstacles to their use in practice? I review experience with five problems where probabilistic forecasting played an important role. This leads me to identify five types of potential users: Low Stakes Users, who don't need probabilistic forecasts; General Assessors, who need an overall idea of the uncertainty in the forecast; Change Assessors, who need to know if a change is out of line with expectatations; Risk Avoiders, who wish to limit the risk of an adverse outcome; and Decision Theorists, who quantify their loss function and perform the decision-theoretic calculations. This suggests that it is important to interact with users and to consider their goals. The cognitive research tells us that calibration is important for trust in probability forecasts, and that it is important to match the verbal expression with the task. The cognitive load should be minimized, reducing the probabilistic forecast to a single percentile if appropriate. Probabilities of adverse events and percentiles of the predictive distribution of quantities of interest seem often to be the best way to summarize probabilistic forecasts. Formal decision theory has an important role, but in a limited range of applications.
概率预测越来越容易获取。应该如何使用和传达这些预测?在实际应用中存在哪些障碍?我回顾了概率预测发挥重要作用的五个问题的经验。这使我确定了五种潜在用户类型:低风险用户,他们不需要概率预测;一般评估者,他们需要了解预测中不确定性的总体情况;变化评估者,他们需要知道变化是否与预期不符;风险规避者,他们希望限制不利结果的风险;以及决策理论家,他们量化损失函数并进行决策理论计算。这表明与用户互动并考虑他们的目标很重要。认知研究告诉我们,校准对于概率预测的信任很重要,并且使语言表达与任务相匹配也很重要。应尽量减少认知负荷,如果合适的话,将概率预测简化为单个百分位数。不良事件的概率和感兴趣数量的预测分布的百分位数似乎常常是总结概率预测的最佳方式。形式决策理论有重要作用,但应用范围有限。