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Optimal sampling rates for approximating analytic functions from pointwise samples

机译:从尖样品近似分析功能的最佳采样率

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摘要

We consider the problem of approximating an analytic function on a compact interval from its values at M + 1 distinct points. When the points are equispaced, a recent result (the so-called impossibility theorem) has shown that the best possible convergence rate of a stable method is root-exponential in M, and that any method with faster exponential convergence must also be exponentially ill conditioned at a certain rate. This result hinges on a classical theorem of Coppersmith & Rivlin concerning the maximal behavior of polynomials bounded on an equispaced grid. In this paper, we first generalize this theorem to arbitrary point distributions. We then present an extension of the impossibility theorem valid for general nonequispaced points and apply it to the case of points that are equidistributed with respect to (modified) Jacobi weight functions. This leads to a necessary sampling rate for stable approximation from such points. We prove that this rate is also sufficient, and therefore exactly quantify (up to constants) the precise sampling rate for approximating analytic functions from such node distributions with stable methods. Numerical results-based on computing the maximal polynomial via a variant of the classical Remez algorithm-confirm our main theorems. Finally, we discuss the implications of our results for polynomial least-squares approximations. In particular, we theoretically confirm the well-known heuristic that stable least-squares approximation using polynomials of degree N < M is possible only once M is sufficiently large for there to be a subset of N of the nodes that mimic the behavior of the Nth set of Chebyshev nodes.
机译:我们考虑从其在M + 1个不同点的值中近似于紧凑间隔内的分析功能的问题。当指数等待时,最近的结果(所谓的不可能性定理)表明,稳定方法的最佳可能收敛速率是M中的根本指数,并且任何具有更快的指数收敛的方法也必须是指数不良的以一定的速度。这结果铰接涉及在等特网格上界定的多项式的最大行为的COPPERSMITH和RIVLIN的经典定理。在本文中,我们首先将该定理概括为任意点分布。然后,我们展示了对一般非查询点的无效定理的延伸,并将其应用于关于(修改的)Jacobi重量函数等分列的点的情况。这导致了从这些点稳定近似的必要采样率。我们证明这种速率也足够,因此精确地量化(最多常数),用于近似来自具有稳定方法的节点分布的分析功能的精确采样率。基于通过经典Remez算法的变体计算最大多项式的数值结果 - 确认我们的主要定理。最后,我们讨论了我们对多项式最小二乘近似的结果的影响。特别地,我们理论上证实了使用程度N

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