Scale-adaptive and robust intrinsic dimension estimation via optimal neighbourhood identification
arXiv stat.ML / 4/2/2026
💬 OpinionIdeas & Deep AnalysisModels & Research
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.
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