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The Combinatorial Rank of Subsets: Metric Density in Finite Hamming Spaces (2506.13081v1)

Published 16 Jun 2025 in cs.DM and math.CO

Abstract: We introduce a novel concept of rank for subsets of finite metric spaces En_q (the set of all n-dimensional vectors over an alphabet of size q) equipped with the Hamming distance, where the rank R(A) of a subset A is defined as the number of non-constant columns in the matrix formed by the vectors of A. This purely combinatorial definition provides a new perspective on the structure of finite metric spaces, distinct from traditional linear-algebraic notions of rank. We establish tight bounds for R(A) in terms of D_A, the sum of Hamming distances between all pairs of elements in A. Specifically, we prove that 2qD_A/((q-1)|A|2) <= R(A) <= D_A/(|A|-1) when |A|/q >= 1, with a modified lower bound for the case |A|/q < 1. These bounds show that the rank is constrained by the metric properties of the subset. Furthermore, we introduce the concept of metrically dense subsets, which are subsets that minimize rank among all isometric images. This notion captures an extremal property of subsets that represent their distance structure in the most compact way possible. We prove that subsets with uniform column distribution are metrically dense, and as a special case, establish that when q is a prime power, every linear subspace of En_q is metrically dense. This reveals a fundamental connection between the algebraic and metric structures of these spaces.

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