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首页> 外文期刊>ESAIM. Mathematical modelling and numerical analysis >DISCRETE LEAST SQUARES POLYNOMIAL APPROXIMATION WITH RANDOM EVALUATIONS - APPLICATION TO PARAMETRIC AND STOCHASTIC ELLIPTIC PDES
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DISCRETE LEAST SQUARES POLYNOMIAL APPROXIMATION WITH RANDOM EVALUATIONS - APPLICATION TO PARAMETRIC AND STOCHASTIC ELLIPTIC PDES

机译:离散最小二乘多项式逼近与随机估计-在参数和随机椭圆点上的应用。

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Motivated by the numerical treatment of parametric and stochastic PDEs, we analyze the least-squares method for polynomial approximation of multivariate functions based on random sampling according to a given probability measure. Recent work has shown that in the univariate case, the least-squares method is quasi-optimal in expectation in [A. Cohen, M A. Davenport and D. Leviatan. Found. Comput. Math. 13 (2013) 819-834] and in probability in [G. Migliorati, F. Nobile, E. von Schwerin, R. Tempone, Found. Comput. Math. 14 (2014) 419-456], under suitable conditions that relate the number of samples with respect to the dimension of the polynomial space. Here "quasi-optimal" means that the accuracy of the least-squares approximation is comparable with that of the best approximation in the given polynomial space. In this paper, we discuss the quasi-optimality of the polynomial least-squares method in arbitrary dimension. Our analysis applies to any arbitrary multivariate polynomial space (including tensor product, total degree or hyperbolic crosses), under the minimal requirement that its associated index set is downward closed. The optimality criterion only involves the relation between the number of samples and the dimension of the polynomial space, independently of the anisotropic shape and of the number of variables. We extend our results to the approximation of Hilbert space-valued functions in order to apply them to the approximation of parametric and stochastic elliptic PDEs. As a particular case, we discuss "inclusion type" elliptic PDE models, and derive an exponential convergence estimate for the least-squares method. Numerical results confirm our estimate, yet pointing out a gap between the condition necessary to achieve optimality in the theory, and the condition that in practice yields the optimal convergence rate.
机译:基于参数化和随机PDE的数值处理的动机,我们根据给定的概率测度,分析了基于随机采样的多元函数多项式逼近的最小二乘法。最近的工作表明,在单变量情况下,最小二乘方法在[A]中的期望是准最优的。科恩,马·达文波特和D.找到了。计算数学。 13(2013)819-834],并以[G.发现Migliorati,F。Nobile,E。von Schwerin,R。Tempone。计算数学。 14(2014)419-456],在合适的条件下,将样本数量与多项式空间的维度相关联。在此,“准最佳”是指在给定的多项式空间中,最小二乘近似的精度与最佳近似的精度相当。在本文中,我们讨论了任意维上的多项式最小二乘方法的拟最优性。我们的分析适用于任何任意的多元多项式空间(包括张量积,总度数或双曲线交叉),且其关联的索引集必须向下封闭。最佳准则仅涉及样本数量与多项式空间维数之间的关系,而与各向异性形状和变量数量无关。我们将结果扩展到Hilbert空间值函数的逼近,以便将其应用于参数化和随机椭圆PDE的逼近。作为一个特例,我们讨论“包含类型”椭圆PDE模型,并得出最小二乘法的指数收敛估计。数值结果证实了我们的估计,但指出了在理论上实现最优所需的条件与实际产生最优收敛速度的条件之间的差距。

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