Submitted:
04 September 2025
Posted:
05 September 2025
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Abstract
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 \( \ P_N \) that removing \( \ N \) points reduces the symmetry to the trivial group \( \ C_1 \). The complementary quantity \( \ S_N = 1 - P_N \), serves as a measure of symmetry stability, providing a robustness profile of the configuration. We calculate \( \ S_N \) explicitly for representative families of symmetric point sets, including linear arrays, polygons, polyhedra, and crystallographic unit cells. Our results demonstrate unexpected behaviors: the regular hexagon loses symmetry with probability 0.6 under removal of three vertices, while cubes and tetrahedra exhibit maximal robustness\( \ (S_N = 1) \) 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.
Keywords:
1. Introduction
2. Results
2.1. Introducing the Probabilistic Measure of the Symmetry Stability
2.2. Calculation of the Probabilistic Measure of the Symmetry Stability for 2p Equidistant Points Placed on the Same Straight Line
2.3. Calculation of the Probabilistic Measure of the Symmetry Stability for Symmetrical Triangles
2.4. Calculation of the Probabilistic Measure of the Symmetry Stability for the Sets Built of Four Points

2.5. Calculation of the Probabilistic Measure of the Symmetry Stability for Regular Polygons

2.6. Calculation of the Probabilistic Measure of the Symmetry Stability for Tetrahedron and Octahedron
2.7. Calculation of the Probabilistic Measure of the Symmetry Stability for Cubic Crystallographic Cells
2.8. Shannon Probabilistic Measure of the Symmetry Stability
3. Discussion
- i)
- Extension to higher-dimensional and complex point sets. While we considered 2D polygons and 3D polyhedra, many systems of interest—such as quasicrystals, complex molecular clusters, and high-dimensional lattices—pose challenging combinatorial problems. Extending calculations to these structures could uncover novel symmetry robustness patterns.
- ii)
- Study of probabilistic symmetry in dynamic systems. In physical and biological systems, perturbations often occur continuously rather than as discrete deletions. Developing a time-dependent or stochastic version of could quantify the resilience of symmetry under fluctuating forces, thermal noise, or dynamic defects. Study of the time evolution of is of a particular interest.
- iii)
- Connection with statistical physics and phase transitions:
- iv)
- Systematic computation of for various crystal lattices (including HCP and more complicated structures) can inform defect-tolerance studies, mechanical stability, and design of robust nanostructures. The probabilistic framework could guide the development of materials resistant to random defects.
- v)
- Integration with network theory and combinatorics looks attractive. Symmetry stability can be generalized to networks with geometric embedding, where nodes or edges are removed randomly. This opens potential connections with probabilistic graph theory, random automorphism groups, and combinatorial optimization.
- vi)
- Algorithmic and computational development is instructive. Efficient algorithms for exact or approximate computation of the introduced and the Shannon symmetry entropy Sh for large or high-symmetry point sets will be crucial. Monte Carlo simulations, group-theoretic enumeration, and probabilistic combinatorial techniques can all play a role.
- vii)
- Experimental validation of the suggested ideas is desirable. Measuring symmetry survival probabilities in real physical systems—such as nanoparticles under random vacancy formation, molecules with isotopic substitutions, or lattice defects under irradiation, could validate and calibrate the theoretical framework, bridging theory with experimental observation.
4. Conclusions
Author Contributions
Funding
Data Availability Statement
Acknowledgments
Conflicts of Interest
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