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QUANTIFICATION OF UNCERTAINTY FROM HIGH-DIMENSIONAL SCATTERED DATA VIA POLYNOMIAL APPROXIMATION

机译:通过多项式逼近从高维散射数据中量化不确定性

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Ths paper discusses a methodology for determining a functional representation of a random process from a collection of scattered pointwise samples. The present work specifically focuses onto random quantities lying in a high-dimensional stochastic space in the context of limited amount of information. The proposed approach involves a procedure for the selection of an approximation basis and the evaluation of the associated coefficients. The selection of the approximation basis relies on the a priori choice of the high-dimensional model representation format combined with a modified least angle regression technique. The resulting basis then provides the structure for the actual approximation basis, possibly using different functions, more parsimonious and nonlinear in its coefficients. To evaluate the coefficients, both an alternate least squares and an alternate weighted total least squares methods are employed. Examples are provided for the approximation of a random variable in a high-dimensional space as well as the estimation of a random field. Stochastic dimensions up to 100 are considered, with an amount of information as low as about 3 samples per dimension, and robustness of the approximation is demonstrated with respect to noise in the dataset. The computational cost of the solution method is shown to scale only linearly with the cardinality of the a priori basis and exhibits a (N_q)~s, 2 < s < 3, dependence with the number N_q of samples in the dataset. The provided numerical experiments illustrate the ability of the present approach to derive an accurate approximation from scarce scattered data even in the presence of noise.
机译:本文讨论了一种从分散的逐点样本的集合中确定随机过程的功能表示的方法。本工作特别关注于在信息量有限的情况下位于高维随机空间中的随机量。所提出的方法涉及选择近似基础和评估相关系数的过程。近似基础的选择取决于与改进的最小角度回归技术结合的高维模型表示格式的先验选择。然后,所得基础提供了用于实际逼近基础的结构,可能使用了不同的函数,其系数更为简约和非线性。为了评估系数,同时使用了交替最小二乘法和加权加权总最小二乘法。提供了高维空间中随机变量的近似以及随机场的估计的示例。考虑到随机维度最大为100,每个维度的信息量低至大约3个样本,并且相对于数据集中的噪声证明了近似的鲁棒性。结果表明,求解方法的计算成本仅与先验基数成线性比例关系,并且表现出(N_q)〜s,2 <s <3,与数据集中样本数N_q有关。提供的数值实验说明了即使在存在噪声的情况下,本方法也能够从稀疏的分散数据中得出准确的近似值。

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