MLLGDGMGSTJul 18, 2025

A Survey of Dimension Estimation Methods

arXiv:2507.13887v18 citationsh-index: 1
Originality Synthesis-oriented
AI Analysis

It addresses the problem of selecting reliable dimension estimators for researchers and practitioners, but is incremental as it synthesizes existing methods without introducing new ones.

This survey reviews and categorizes various dimension estimation methods, evaluating their performance on issues like robustness to hyperparameters, sample size, and accuracy in high dimensions, and finds that overfitting is common, limiting generalization.

It is a standard assumption that datasets in high dimension have an internal structure which means that they in fact lie on, or near, subsets of a lower dimension. In many instances it is important to understand the real dimension of the data, hence the complexity of the dataset at hand. A great variety of dimension estimators have been developed to find the intrinsic dimension of the data but there is little guidance on how to reliably use these estimators. This survey reviews a wide range of dimension estimation methods, categorising them by the geometric information they exploit: tangential estimators which detect a local affine structure; parametric estimators which rely on dimension-dependent probability distributions; and estimators which use topological or metric invariants. The paper evaluates the performance of these methods, as well as investigating varying responses to curvature and noise. Key issues addressed include robustness to hyperparameter selection, sample size requirements, accuracy in high dimensions, precision, and performance on non-linear geometries. In identifying the best hyperparameters for benchmark datasets, overfitting is frequent, indicating that many estimators may not generalise well beyond the datasets on which they have been tested.

Foundations

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