MLMay 24, 2016

Convergence guarantees for kernel-based quadrature rules in misspecified settings

arXiv:1605.07254v256 citations
Originality Incremental advance
AI Analysis

This provides theoretical guarantees for numerical integration in machine learning when integrands are misspecified, addressing a gap for practitioners using black-box functions.

The paper tackles the problem of kernel-based quadrature rules failing when integrands lack assumed smoothness, proving they remain consistent with convergence rates dependent on the actual lesser smoothness.

Kernel-based quadrature rules are becoming important in machine learning and statistics, as they achieve super-$\sqrt{n}$ convergence rates in numerical integration, and thus provide alternatives to Monte Carlo integration in challenging settings where integrands are expensive to evaluate or where integrands are high dimensional. These rules are based on the assumption that the integrand has a certain degree of smoothness, which is expressed as that the integrand belongs to a certain reproducing kernel Hilbert space (RKHS). However, this assumption can be violated in practice (e.g., when the integrand is a black box function), and no general theory has been established for the convergence of kernel quadratures in such misspecified settings. Our contribution is in proving that kernel quadratures can be consistent even when the integrand does not belong to the assumed RKHS, i.e., when the integrand is less smooth than assumed. Specifically, we derive convergence rates that depend on the (unknown) lesser smoothness of the integrand, where the degree of smoothness is expressed via powers of RKHSs or via Sobolev spaces.

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