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The Separatrix Algorithm for Synthesis and Analysis of Stochastic Simulations with Applications in Disease Modeling

机译:Separatrix算法用于随机模拟的综合与分析在疾病建模中的应用

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摘要

Decision makers in epidemiology and other disciplines are faced with the daunting challenge of designing interventions that will be successful with high probability and robust against a multitude of uncertainties. To facilitate the decision making process in the context of a goal-oriented objective (e.g., eradicate polio by ), stochastic models can be used to map the probability of achieving the goal as a function of parameters. Each run of a stochastic model can be viewed as a Bernoulli trial in which “success” is returned if and only if the goal is achieved in simulation. However, each run can take a significant amount of time to complete, and many replicates are required to characterize each point in parameter space, so specialized algorithms are required to locate desirable interventions. To address this need, we present the Separatrix Algorithm, which strategically locates parameter combinations that are expected to achieve the goal with a user-specified probability of success (e.g. 95%). Technically, the algorithm iteratively combines density-corrected binary kernel regression with a novel information-gathering experiment design to produce results that are asymptotically correct and work well in practice. The Separatrix Algorithm is demonstrated on several test problems, and on a detailed individual-based simulation of malaria.
机译:流行病学和其他学科的决策者面临设计严峻挑战的艰巨挑战,这些干预措施将很可能成功,并且能够应对多种不确定性。为了在面向目标的目标(例如,通过消除小儿麻痹症)的背景下促进决策过程,可以使用随机模型将实现目标的概率映射为参数的函数。随机模型的每次运行都可以看作是伯努利试验,其中且仅当在模拟中达到目标时才返回“成功”。但是,每次运行可能要花费大量时间才能完成,并且需要大量重复才能表征参数空间中的每个点,因此需要专门的算法来定位所需的干预措施。为了满足这一需求,我们提出了Separatrix算法,该算法可策略性地定位期望以用户指定的成功概率(例如95%)实现目标的参数组合。从技术上讲,该算法将经过密度校正的二进制核回归与新颖的信息收集实验设计进行迭代组合,以产生渐近正确的结果,并且在实践中能很好地发挥作用。 Separatrix算法在几个测试问题上以及在详细的基于个体的疟疾模拟中得到了证明。

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