Polynomial-Time Algorithms for Continuous Metrics on Atomic Clouds of Unordered Points

The most fundamental model of a molecule is a cloud of unordered atoms, even without chemical bonds that can depend on thresholds for distances and angles. The strongest equivalence between clouds of atoms is rigid motion, which is a composition of translations and rotations. The existing datasets o...

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Veröffentlicht in:Match (Mülheim) 2024, Vol.91 (1), p.79-108
1. Verfasser: Kurlin, Vitaliy
Format: Artikel
Sprache:eng
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Zusammenfassung:The most fundamental model of a molecule is a cloud of unordered atoms, even without chemical bonds that can depend on thresholds for distances and angles. The strongest equivalence between clouds of atoms is rigid motion, which is a composition of translations and rotations. The existing datasets of experimental and simulated molecules require a continuous quantification of similarity in terms of a distance metric. While clouds of m ordered points were continuously classified by Lagrange’s quadratic forms (distance matrices or Gram matrices), their extensions to m unordered points are impractical due to the exponential number of m! permutations. We propose new metrics that are continuous in general position and are computable in a polynomial time in the number m of unordered points in any Euclidean space of a fixed dimension n.
ISSN:0340-6253
DOI:10.46793/match.91-1.079K