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Hamilton-Jacobi equations on graphs with applications to semi-supervised learning and data depth
[article]
2022
arXiv
pre-print
Shortest path graph distances are widely used in data science and machine learning, since they can approximate the underlying geodesic distance on the data manifold. However, the shortest path distance is highly sensitive to the addition of corrupted edges in the graph, either through noise or an adversarial perturbation. In this paper we study a family of Hamilton-Jacobi equations on graphs that we call the p-eikonal equation. We show that the p-eikonal equation with p=1 is a provably robust
arXiv:2202.08789v2
fatcat:5llfa4m2hvai5ngq45pvupdou4