arXiv Analytics

Sign in

arXiv:1802.08703 [math.AP]AbstractReferencesReviewsResources

Large data limit for a phase transition model with the p-Laplacian on point clouds

Riccardo Cristoferi, Matthew Thorpe

Published 2018-02-23Version 1

The consistency of a nonlocal anisotropic Ginzburg-Landau type functional for data classification and clustering is studied. The Ginzburg-Landau objective functional combines a double well potential, that favours indicator valued function, and the $p$-Laplacian, that enforces regularity. Under appropriate scaling between the two terms minimisers exhibit a phase transition on the order of $\epsilon=\epsilon_n$ where $n$ is the number of data points. We study the large data asymptotics, i.e. as $n\to \infty$, in the regime where $\epsilon_n\to 0$. The mathematical tool used to address this question is $\Gamma$-convergence. In particular, it is proved that the discrete model converges to a weighted anisotropic perimeter.

Related articles: Most relevant | Search more
arXiv:2112.06737 [math.AP] (Published 2021-12-13, updated 2022-06-26)
Large data limit of the MBO scheme for data clustering: $Γ$-convergence of the thresholding energies
arXiv:1211.3029 [math.AP] (Published 2012-11-13)
A phase transition model for the helium supercooling
arXiv:2209.05837 [math.AP] (Published 2022-09-13)
Large data limit of the MBO scheme for data clustering: convergence of the dynamics