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arxiv:2512.15285

Topological Metric for Unsupervised Embedding Quality Evaluation

Published on Dec 17, 2025
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Abstract

Persistence is a topology-aware metric using persistent homology to evaluate embedding quality by capturing geometric structure and topological richness in an unsupervised manner.

AI-generated summary

Modern representation learning increasingly relies on unsupervised and self-supervised methods trained on large-scale unlabeled data. While these approaches achieve impressive generalization across tasks and domains, evaluating embedding quality without labels remains an open challenge. In this work, we propose Persistence, a topology-aware metric based on persistent homology that quantifies the geometric structure and topological richness of embedding spaces in a fully unsupervised manner. Unlike metrics that assume linear separability or rely on covariance structure, Persistence captures global and multi-scale organization. Empirical results across diverse domains show that Persistence consistently achieves top-tier correlations with downstream performance, outperforming existing unsupervised metrics and enabling reliable model and hyperparameter selection.

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