Asymptotic behavior of $\ell_p$-based Laplacian regularization in semi-supervised learning
Ahmed El Alaoui, Xiang Cheng, Aaditya Ramdas, Martin J. Wainwright,, Michael I. Jordan

TL;DR
This paper analyzes the asymptotic behavior of $\,\ell_p$-based Laplacian regularization in semi-supervised learning on random geometric graphs, revealing phase transitions in smoothness and sensitivity to data distribution as $p$ varies.
Contribution
It provides a theoretical characterization of $\,\ell_p$ regularization effects, identifying a phase transition at $p = d+1$ and optimality of this choice for balancing smoothness and data sensitivity.
Findings
Phase transition at $p = d+1$ in function smoothness.
For $p \,\leq d$, estimates are spiky and degenerate.
For $p \,\geq d+1$, estimates are smooth and distribution-independent.
Abstract
Given a weighted graph with vertices, consider a real-valued regression problem in a semi-supervised setting, where one observes labeled vertices, and the task is to label the remaining ones. We present a theoretical study of -based Laplacian regularization under a -dimensional geometric random graph model. We provide a variational characterization of the performance of this regularized learner as grows to infinity while stays constant, the associated optimality conditions lead to a partial differential equation that must be satisfied by the associated function estimate . From this formulation we derive several predictions on the limiting behavior the -dimensional function , including (a) a phase transition in its smoothness at the threshold , and (b) a tradeoff between smoothness and sensitivity to the underlying unlabeled data…
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Taxonomy
TopicsNumerical methods in inverse problems · Advanced Mathematical Modeling in Engineering · Image and Signal Denoising Methods
