The Geometry of Meaning: Perfect Spacetime Representations of Hierarchical Structures
Andres Anabalon, Hugo Garces, Julio Oliva, Jose Cifuentes

TL;DR
This paper presents a fast algorithm for embedding hierarchical structures into three-dimensional Minkowski spacetime, encoding data purely through causal relationships, and achieving perfect representations of WordNet hierarchies.
Contribution
The authors introduce a novel method for embedding hierarchical data into spacetime geometry that captures structures exactly without global symbolic access.
Findings
Perfect embedding of WordNet mammal sub-tree including ambiguities
Extension to unambiguous WordNet subset with 82,115 nouns
Causality-based retrieval mechanism outperforms distance-based methods
Abstract
We show that there is a fast algorithm that embeds hierarchical structures in three-dimensional Minkowski spacetime. The correlation of data ends up purely encoded in the causal structure. Our model relies solely on oriented token pairs -- local hierarchical signals -- with no access to global symbolic structure. We apply our method to the corpus of \textit{WordNet}. We provide a perfect embedding of the mammal sub-tree including ambiguities (more than one hierarchy per node) in such a way that the hierarchical structures get completely codified in the geometry and exactly reproduce the ground-truth. We extend this to a perfect embedding of the maximal unambiguous subset of the \textit{WordNet} with 82{,}115 noun tokens and a single hierarchy per token. We introduce a novel retrieval mechanism in which causality, not distance, governs hierarchical access. Our results seem to indicate…
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Taxonomy
TopicsArchitecture and Computational Design
