The recovery of ridge functions on the hypercube suffers from the curse of dimensionality
Abstract
A multivariate ridge function is a function of the form f(x) = g(a T x), where g is univariate and a ∈ Rd. We show that the recovery of an unknown ridge function defined on the hypercube [-1,1]d with Lipschitz-regular profile g suffers from the curse of dimensionality when the recovery error is measured in the L∞-norm, even if we allow randomized algorithms. If a limited number of components of a is substantially larger than the others, then the curse of dimensionality is not present and the problem is weakly tractable provided the profile g is sufficiently regular.
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