STMEMLJun 17, 2021

Taming Nonconvexity in Kernel Feature Selection -- Favorable Properties of the Laplace Kernel

arXiv:2106.09387v34 citations
AI Analysis

This addresses a theoretical gap for practitioners in nonparametric statistics by providing rigorous support for feature selection methods, though it is incremental in focusing on specific kernel properties.

The paper tackles the challenge of nonconvex optimization in kernel-based feature selection by showing that the Laplace kernel eliminates unfavorable stationary points, enabling statistical guarantees without requiring global optima. It establishes model-selection consistency with n ∼ log p samples for recovering main effects and hierarchical interactions.

Kernel-based feature selection is an important tool in nonparametric statistics. Despite many practical applications of kernel-based feature selection, there is little statistical theory available to support the method. A core challenge is the objective function of the optimization problems used to define kernel-based feature selection are nonconvex. The literature has only studied the statistical properties of the \emph{global optima}, which is a mismatch, given that the gradient-based algorithms available for nonconvex optimization are only able to guarantee convergence to local minima. Studying the full landscape associated with kernel-based methods, we show that feature selection objectives using the Laplace kernel (and other $\ell_1$ kernels) come with statistical guarantees that other kernels, including the ubiquitous Gaussian kernel (or other $\ell_2$ kernels) do not possess. Based on a sharp characterization of the gradient of the objective function, we show that $\ell_1$ kernels eliminate unfavorable stationary points that appear when using an $\ell_2$ kernel. Armed with this insight, we establish statistical guarantees for $\ell_1$ kernel-based feature selection which do not require reaching the global minima. In particular, we establish model-selection consistency of $\ell_1$-kernel-based feature selection in recovering main effects and hierarchical interactions in the nonparametric setting with $n \sim \log p$ samples.

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