Symmetry is a fundamental principle in mathematics, physics, and biology, where it governs structure and invariance. Classical symmetry analysis focuses on exact group-theoretic descriptions, but rarely addresses how robust a symmetric configuration is to perturbations. In this work, we introduce a probabilistic framework for quantifying the stability of finite point-set symmetries under random deletions. Specifically, given a finite set of points with a prescribed nontrivial symmetry group, we define the probability PN that removing N points reduces the symmetry to the trivial group C1. The complementary quantity SN=1−PN serves as a measure of symmetry stability, providing a robustness profile of the configuration. We calculate SN explicitly for representative families of symmetric point sets, including linear arrays, polygons, polyhedra, directed necklace of points, and crystallographic unit cells. Our results demonstrate unexpected behaviors: the regular hexagon loses symmetry with a probability of 0.6 under the removal of three vertices, while cubes and tetrahedra exhibit the maximal robustness (SN=1) for all admissible N. We further introduce a Shannon entropy of symmetry stability, which quantifies the overall uncertainty of symmetry breaking across all deletion sizes. This framework extends classical symmetry studies by incorporating randomness, linking group theory with probabilistic combinatorics, and suggesting applications ranging from crystallography to defect tolerance in physical systems.
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Edward Bormashenko
Ariel University
Symmetry
Ariel University
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Edward Bormashenko (Tue,) studied this question.
synapsesocial.com/papers/68e6a0f4718ef0a556b33d7e — DOI: https://doi.org/10.3390/sym17101675