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On the Optimality of Misspecified Spectral Algorithms

Abstract

In the misspecified spectral algorithms problem, researchers usually assume the underground true function fρ[H]sf_{\rho}^{*} \in [\mathcal{H}]^{s}, a less-smooth interpolation space of a reproducing kernel Hilbert space (RKHS) H\mathcal{H} for some s(0,1)s\in (0,1). The existing minimax optimal results require fρL<\|f_{\rho}^{*}\|_{L^{\infty}}<\infty which implicitly requires s>α0s > \alpha_{0} where α0(0,1)\alpha_{0}\in (0,1) is the embedding index, a constant depending on H\mathcal{H}. Whether the spectral algorithms are optimal for all s(0,1)s\in (0,1) is an outstanding problem lasting for years. In this paper, we show that spectral algorithms are minimax optimal for any α01β<s<1\alpha_{0}-\frac{1}{\beta} < s < 1, where β\beta is the eigenvalue decay rate of H\mathcal{H}. We also give several classes of RKHSs whose embedding index satisfies α0=1β \alpha_0 = \frac{1}{\beta} . Thus, the spectral algorithms are minimax optimal for all s(0,1)s\in (0,1) on these RKHSs.

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