Sobolev Transport: A Scalable Metric for Probability Measures with Graph Metrics
Abstract
Optimal transport (OT) is a popular measure to compare probability distributions. However, OT suffers a few drawbacks such as (i) a high complexity for computation, (ii) indefiniteness which limits its applicability to kernel machines. In this work, we consider probability measures supported on a graph metric space and propose a novel Sobolev transport metric. We show that the Sobolev transport metric yields a closed-form formula for fast computation and it is negative definite. We show that the space of probability measures endowed with this transport distance is isometric to a bounded convex set in a Euclidean space with a weighted l_p distance. We further exploit the negative definiteness of the Sobolev transport to design positive-definite kernels, and evaluate their performances against other baselines in document classification with word embeddings and in topological data analysis.
Cite
Text
Le et al. " Sobolev Transport: A Scalable Metric for Probability Measures with Graph Metrics ." Artificial Intelligence and Statistics, 2022.Markdown
[Le et al. " Sobolev Transport: A Scalable Metric for Probability Measures with Graph Metrics ." Artificial Intelligence and Statistics, 2022.](https://mlanthology.org/aistats/2022/le2022aistats-sobolev/)BibTeX
@inproceedings{le2022aistats-sobolev,
title = {{ Sobolev Transport: A Scalable Metric for Probability Measures with Graph Metrics }},
author = {Le, Tam and Nguyen, Truyen and Phung, Dinh and Anh Nguyen, Viet},
booktitle = {Artificial Intelligence and Statistics},
year = {2022},
pages = {9844-9868},
volume = {151},
url = {https://mlanthology.org/aistats/2022/le2022aistats-sobolev/}
}