Scale-adaptive and robust intrinsic dimension estimation via optimal neighbourhood identification

arXiv stat.ML / 4/2/2026

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Key Points

  • The paper addresses the problem that intrinsic dimension (ID) estimates in real-world data vary with the analysis scale, often becoming unreliable at very small or very large scales due to measurement error and manifold effects (curvature/topology).
  • It proposes an automatic, self-consistent protocol to identify the “sweet spot” scale range where the ID is meaningful by enforcing that density remains constant below the correct scale.
  • The method works by linking scale selection to density estimation, where density estimation requires the ID, and the ID is therefore solved self-consistently within the framework.
  • The authors validate robustness to noise using benchmarks on both synthetic and real-world datasets, demonstrating improved stability compared with scale-sensitive approaches.

Abstract

The Intrinsic Dimension (ID) is a key concept in unsupervised learning and feature selection, as it is a lower bound to the number of variables which are necessary to describe a system. However, in almost any real-world dataset the ID depends on the scale at which the data are analysed. Quite typically at a small scale, the ID is very large, as the data are affected by measurement errors. At large scale, the ID can also appear erroneously large, due to the curvature and the topology of the manifold containing the data. In this work, we introduce an automatic protocol to select the sweet spot, namely the correct range of scales in which the ID is meaningful and useful. This protocol is based on imposing that for distances smaller than the correct scale the density of the data is constant. In the presented framework, to estimate the density it is necessary to know the ID, therefore, this condition is imposed self-consistently. We illustrate the usefulness and robustness of this procedure to noise by benchmarks on artificial and real-world datasets.

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