LGCGATMLMar 12, 2025

Cover Learning for Large-Scale Topology Representation

arXiv:2503.09767v21 citationsh-index: 8ICML
Originality Incremental advance
AI Analysis

This addresses limitations in topological data analysis for researchers, offering a more scalable and tunable approach to topology representation, though it appears incremental as it builds on existing cover-based methods.

The paper tackles the problem of learning topologically-faithful covers for geometric datasets, showing that the resulting simplicial complexes outperform standard topological inference methods in size and Mapper-type algorithms in representing large-scale topology.

Classical unsupervised learning methods like clustering and linear dimensionality reduction parametrize large-scale geometry when it is discrete or linear, while more modern methods from manifold learning find low dimensional representation or infer local geometry by constructing a graph on the input data. More recently, topological data analysis popularized the use of simplicial complexes to represent data topology with two main methodologies: topological inference with geometric complexes and large-scale topology visualization with Mapper graphs -- central to these is the nerve construction from topology, which builds a simplicial complex given a cover of a space by subsets. While successful, these have limitations: geometric complexes scale poorly with data size, and Mapper graphs can be hard to tune and only contain low dimensional information. In this paper, we propose to study the problem of learning covers in its own right, and from the perspective of optimization. We describe a method for learning topologically-faithful covers of geometric datasets, and show that the simplicial complexes thus obtained can outperform standard topological inference approaches in terms of size, and Mapper-type algorithms in terms of representation of large-scale topology.

Foundations

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