论文标题
从多模型预测工作中解释的强大场景解释
Robust Scenario Interpretation from Multi-model Prediction Efforts
论文作者
论文摘要
传染病建模和气候建模中的多模型预测工作涉及多个在各种情况下独立生产预测的团队。通常,这些情况是由于未来的存在和不存在决定而产生的,例如,将来没有疫苗接种(方案A)与疫苗接种(场景B)。这些模型为每种情况提交概率预测。获得对决策影响的置信区间(例如,避免死亡人数)对于决策很重要。但是,由于尚不清楚联合概率,因此很难从单个场景的概率投影中获得紧密的界限。此外,由于各种原因,包括重写模拟以及存储和转移要求,模型可能无法生成关节概率分布。 在不要求提交模型进行额外工作的情况下,我们旨在估算由于决策变量而对结果的非平凡绑定。我们首先在关键假设下证明,只有预测的分位数,就可以在场景预测的差异上获得$α-$置信区间。然后,我们展示如何在放松该假设后估计置信区间。我们使用我们的方法来估计由于基于模型提交的美国场景建模中心的疫苗接种而导致病例,死亡和住院的减少置信区间。
Multi-model prediction efforts in infectious disease modeling and climate modeling involve multiple teams independently producing projections under various scenarios. Often these scenarios are produced by the presence and absence of a decision in the future, e.g., no vaccinations (scenario A) vs vaccinations (scenario B) available in the future. The models submit probabilistic projections for each of the scenarios. Obtaining a confidence interval on the impact of the decision (e.g., number of deaths averted) is important for decision making. However, obtaining tight bounds only from the probabilistic projections for the individual scenarios is difficult, as the joint probability is not known. Further, the models may not be able to generate the joint probability distribution due to various reasons including the need to rewrite simulations, and storage and transfer requirements. Without asking the submitting models for additional work, we aim to estimate a non-trivial bound on the outcomes due to the decision variable. We first prove, under a key assumption, that an $α-$confidence interval on the difference of scenario predictions can be obtained given only the quantiles of the predictions. Then we show how to estimate a confidence interval after relaxing that assumption. We use our approach to estimate confidence intervals on reduction in cases, deaths, and hospitalizations due to vaccinations based on model submissions to the US Scenario Modeling Hub.