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Populations of models, Experimental Designs and coverage of parameter space by Latin Hypercube and Orthogonal Sampling

机译:拉丁超立机和正交抽样参数空间的模型,实验设计和覆盖的群体

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In this paper we have used simulations to make a conjecture about the coverage of a t dimensional subspace of a d dimensional parameter space of size n when performing k trials of Latin Hypercube sampling. This takes the form P(k, n, d, t)= 1 - e~(-k)/~(n-)1 . We suggest that this coverage formula is independent of d and this allows us to make connections between building Populations of Models and Experimental Designs. We also show that Orthogonal sampling is superior to Latin Hypercube sampling in terms of allowing a more uniform coverage of the t dimensional subspace at the sub-block size level. These ideas have particular relevance when attempting to perform uncertainty quantification and sensitivity analyses.
机译:在本文中,我们使用模拟在执行拉丁超立方体采样的K试验时对D维参数空间的T维子空间的覆盖率进行猜想。这取得了P(k,n,d,t)= 1 - e〜(-k)/〜(n-)1。我们建议,这种覆盖公式独立于D,这使我们能够在建筑物的模型和实验设计之间进行连接。我们还表明,正交采样优于拉丁超立方体采样,允许在子块大小水平处更均匀地覆盖T维子空间。当试图执行不确定性量化和敏感性分析时,这些想法具有特殊相关性。

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