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A note on estimating the dimension from a random geometric graph (2311.13059v1)

Published 21 Nov 2023 in stat.ML, cs.LG, math.ST, and stat.TH

Abstract: Let $G_n$ be a random geometric graph with vertex set $[n]$ based on $n$ i.i.d.\ random vectors $X_1,\ldots,X_n$ drawn from an unknown density $f$ on $\Rd$. An edge $(i,j)$ is present when $|X_i -X_j| \le r_n$, for a given threshold $r_n$ possibly depending upon $n$, where $| \cdot |$ denotes Euclidean distance. We study the problem of estimating the dimension $d$ of the underlying space when we have access to the adjacency matrix of the graph but do not know $r_n$ or the vectors $X_i$. The main result of the paper is that there exists an estimator of $d$ that converges to $d$ in probability as $n \to \infty$ for all densities with $\int f5 < \infty$ whenever $n{3/2} r_nd \to \infty$ and $r_n = o(1)$. The conditions allow very sparse graphs since when $n{3/2} r_nd \to 0$, the graph contains isolated edges only, with high probability. We also show that, without any condition on the density, a consistent estimator of $d$ exists when $n r_nd \to \infty$ and $r_n = o(1)$.

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