DIMAL: Deep Isometric Manifold Learning Using Sparse Geodesic Sampling
Abstract
This paper explores a fully unsupervised deep learning approach for computing distance-preserving maps that generate low-dimensional embeddings for a certain class of manifolds. We use the Siamese configuration to train a neural network to solve the problem of least squares multidimensional scaling for generating maps that approximately preserve geodesic distances. By training with only a few landmarks, we show a significantly improved local and nonlocal generalization of the isometric mapping as compared to analogous non-parametric counterparts. Importantly, the combination of a deep-learning framework with a multidimensional scaling objective enables a numerical analysis of network architectures to aid in understanding their representation power. This provides a geometric perspective to the generalizability of deep learning.
Cite
@article{arxiv.1711.06011,
title = {DIMAL: Deep Isometric Manifold Learning Using Sparse Geodesic Sampling},
author = {Gautam Pai and Ronen Talmon and Alex Bronstein and Ron Kimmel},
journal= {arXiv preprint arXiv:1711.06011},
year = {2018}
}
Comments
10 pages, 11 Figures