LGMLNov 15, 2020

Functorial Manifold Learning

arXiv:2011.07435v65 citations
AI Analysis

This work addresses the need for a unified theoretical framework in manifold learning, which is incremental as it builds on existing category theory and topological learning research.

The paper tackles the problem of providing a theoretical foundation for manifold learning algorithms by developing a functorial perspective, resulting in refinement bounds, stability analysis, and novel algorithms that are competitive with state-of-the-art methods.

We adapt previous research on category theory and topological unsupervised learning to develop a functorial perspective on manifold learning, also known as nonlinear dimensionality reduction. We first characterize manifold learning algorithms as functors that map pseudometric spaces to optimization objectives and that factor through hierarchical clustering functors. We then use this characterization to prove refinement bounds on manifold learning loss functions and construct a hierarchy of manifold learning algorithms based on their equivariants. We express several popular manifold learning algorithms as functors at different levels of this hierarchy, including Metric Multidimensional Scaling, IsoMap, and UMAP. Next, we use interleaving distance to study the stability of a broad class of manifold learning algorithms. We present bounds on how closely the embeddings these algorithms produce from noisy data approximate the embeddings they would learn from noiseless data. Finally, we use our framework to derive a set of novel manifold learning algorithms, which we experimentally demonstrate are competitive with the state of the art.

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