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Sequential Monte Carlo for Bayesian sequentially designed experiments for discrete data

机译:用于离散数据的贝叶斯顺序设计实验的顺序蒙特卡洛

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摘要

In this paper we present a sequential Monte Carlo algorithm for Bayesian sequential experimental design applied to generalised non-linear models for discrete data. The approach is computationally convenient in that the information of newly observed data can be incorporated through a simple re-weighting step. We also consider a flexible parametric model for the stimulus-response relationship together with a newly developed hybrid design utility that can produce more robust estimates of the target stimulus in the presence of substantial model and parameter uncertainty. The algorithm is applied to hypothetical clinical trial or bioassay scenarios. In the discussion, potential generalisations of the algorithm are suggested to possibly extend its applicability to a wide variety of scenarios.
机译:在本文中,我们为贝叶斯顺序实验设计提出了一种顺序蒙特卡洛算法,该算法适用于离散数据的广义非线性模型。该方法在计算上很方便,因为可以通过简单的重新加权步骤合并新观察到的数据的信息。我们还考虑了用于刺激-响应关系的灵活参数模型,以及新开发的混合设计实用程序,该实用程序可以在存在实质性模型和参数不确定性的情况下对目标刺激产生更可靠的估计。该算法适用于假设的临床试验或生物测定方案。在讨论中,提出了该算法的潜在概括,以可能将其适用性扩展到各种场景。

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