English

Manifold Topology Divergence: a Framework for Comparing Data Manifolds

Machine Learning 2023-05-05 v2 Artificial Intelligence Computer Vision and Pattern Recognition Algebraic Topology Metric Geometry

Abstract

We develop a framework for comparing data manifolds, aimed, in particular, towards the evaluation of deep generative models. We describe a novel tool, Cross-Barcode(P,Q), that, given a pair of distributions in a high-dimensional space, tracks multiscale topology spacial discrepancies between manifolds on which the distributions are concentrated. Based on the Cross-Barcode, we introduce the Manifold Topology Divergence score (MTop-Divergence) and apply it to assess the performance of deep generative models in various domains: images, 3D-shapes, time-series, and on different datasets: MNIST, Fashion MNIST, SVHN, CIFAR10, FFHQ, chest X-ray images, market stock data, ShapeNet. We demonstrate that the MTop-Divergence accurately detects various degrees of mode-dropping, intra-mode collapse, mode invention, and image disturbance. Our algorithm scales well (essentially linearly) with the increase of the dimension of the ambient high-dimensional space. It is one of the first TDA-based practical methodologies that can be applied universally to datasets of different sizes and dimensions, including the ones on which the most recent GANs in the visual domain are trained. The proposed method is domain agnostic and does not rely on pre-trained networks.

Keywords

Cite

@article{arxiv.2106.04024,
  title  = {Manifold Topology Divergence: a Framework for Comparing Data Manifolds},
  author = {Serguei Barannikov and Ilya Trofimov and Grigorii Sotnikov and Ekaterina Trimbach and Alexander Korotin and Alexander Filippov and Evgeny Burnaev},
  journal= {arXiv preprint arXiv:2106.04024},
  year   = {2023}
}
R2 v1 2026-06-24T02:56:18.431Z