Semantic Sections: An Atlas-Native Feature Ontology for Obstructed Representation Spaces
Hossein Javidnia

TL;DR
This paper introduces semantic sections, a new ontology for local features in obstructed representation spaces, demonstrating their effectiveness over traditional global features in interpretability tasks.
Contribution
The paper formalizes semantic sections, proves their properties, and develops a pipeline for discovering and certifying them, addressing limitations of global feature representations in obstructed spaces.
Findings
Semantic sections include cycle-supported globalizable and twisted regimes.
Certified globalizable sections show low similarity with raw global vectors.
Section-based identity recovery outperforms raw similarity baselines.
Abstract
Recent interpretability work often treats a feature as a single global direction, dictionary atom, or latent coordinate shared across contexts. We argue that this ontology can fail in obstructed representation spaces, where locally coherent meanings need not assemble into one globally consistent feature. We introduce an atlas-native replacement object, the semantic section: a transport-compatible family of local feature representatives defined over a context atlas. We formalize semantic sections, prove that tree-supported propagation is always pathwise realizable, and show that cycle consistency is the key criterion for genuine globalization. This yields a distinction between tree-local, globalizable, and twisted sections, with twisted sections capturing locally coherent but holonomy-obstructed meanings. We then develop a discovery-and-certification pipeline based on seeded propagation,…
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Taxonomy
TopicsSemantic Web and Ontologies · Explainable Artificial Intelligence (XAI) · Topic Modeling
