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Local approximation of operators

2022-02-13Unverified0· sign in to hype

Hrushikesh Mhaskar

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Abstract

Many applications, such as system identification, classification of time series, direct and inverse problems in partial differential equations, and uncertainty quantification lead to the question of approximation of a non-linear operator between metric spaces X and Y. We study the problem of determining the degree of approximation of such operators on a compact subset K_X X using a finite amount of information. If F: K_X K_Y, a well established strategy to approximate F(F) for some F K_X is to encode F (respectively, F(F)) in terms of a finite number d (repectively m) of real numbers. Together with appropriate reconstruction algorithms (decoders), the problem reduces to the approximation of m functions on a compact subset of a high dimensional Euclidean space R^d, equivalently, the unit sphere S^d embedded in R^d+1. The problem is challenging because d, m, as well as the complexity of the approximation on S^d are all large, and it is necessary to estimate the accuracy keeping track of the inter-dependence of all the approximations involved. In this paper, we establish constructive methods to do this efficiently; i.e., with the constants involved in the estimates on the approximation on S^d being O(d^1/6). We study different smoothness classes for the operators, and also propose a method for approximation of F(F) using only information in a small neighborhood of F, resulting in an effective reduction in the number of parameters involved.

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