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Efficient construction of Bayes optimal designs for stochastic process models

机译:随机过程模型的贝叶斯最优设计的有效构造

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摘要

Stochastic process models are now commonly used to analyse complex biological, ecological and industrial systems. Increasingly there is a need to deliver accurate estimates of model parameters and assess model fit by optimizing the timing of measurement of these processes. Standard methods to construct Bayes optimal designs, such the well known Muller algorithm, are computationally intensive even for relatively simple models. A key issue is that, in determining the merit of a design, the utility function typically requires summaries of many parameter posterior distributions, each determined via a computer-intensive scheme such as MCMC. This paper describes a fast and computationally efficient scheme to determine optimal designs for stochastic process models. The algorithm compares favourably with other methods for determining optimal designs and can require up to an order of magnitude fewer utility function evaluations for the same accuracy in the optimal design solution. It benefits from being embarrassingly parallel and is ideal for running on multi-core computers. The method is illustrated by determining different sized optimal designs for three problems of increasing complexity.
机译:现在,随机过程模型通常用于分析复杂的生物,生态和工业系统。越来越需要通过优化这些过程的测量时间来提供模型参数的准确估计并评估模型拟合。即使对于相对简单的模型,构造贝叶斯最佳设计的标准方法(例如众所周知的穆勒算法)也需要大量计算。一个关键问题是,在确定设计的优点时,效用函数通常需要汇总许多参数后验分布,每个后验分布都是通过计算机密集型方案(例如MCMC)确定的。本文介绍了一种用于确定随机过程模型的最佳设计的快速且计算效率高的方案。该算法与其他用于确定最佳设计的方法相比具有优势,并且对于最佳设计解决方案中的相同精度,可以需要的实用功能评估数量最多减少一个数量级。它以尴尬的并行方式受益,非常适合在多核计算机上运行。通过针对增加的复杂性的三个问题确定不同大小的最佳设计来说明该方法。

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