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On best approximation by multivariate ridge functions with applications to generalized translation networks

Main:46 Pages
Bibliography:2 Pages
Abstract

We prove sharp upper and lower bounds for the approximation of Sobolev functions by sums of multivariate ridge functions, i.e., functions of the form Rdxk=1nhk(Akx)R\mathbb{R}^d \ni x \mapsto \sum_{k=1}^n h_k(A_k x) \in \mathbb{R} with hk:RRh_k : \mathbb{R}^\ell \to \mathbb{R} and AkR×dA_k \in \mathbb{R}^{\ell \times d}. We show that the order of approximation asymptotically behaves as nr/(d)n^{-r/(d-\ell)}, where rr is the regularity of the Sobolev functions to be approximated. Our lower bound even holds when approximating LL^\infty-Sobolev functions of regularity rr with error measured in L1L^1, while our upper bound applies to the approximation of LpL^p-Sobolev functions in LpL^p for any 1p1 \leq p \leq \infty. These bounds generalize well-known results about the approximation properties of univariate ridge functions to the multivariate case. Moreover, we use these bounds to obtain sharp asymptotic bounds for the approximation of Sobolev functions using generalized translation networks and complex-valued neural networks.

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