Distributional Results for Model-Based Intrinsic Dimension Estimators
Modern datasets are characterized by a large number of features that may conceal complex dependency structures. To deal with this type of data, dimensionality reduction techniques are essential. Numerous dimensionality reduction methods rely on the concept of intrinsic dimension, a measure of the complexity of the dataset. In this article, we first review the TWO-NN model, a likelihood-based intrinsic dimension estimator recently introduced in the literature. The TWO-NN estimator is based on the statistical properties of the ratio of the distances between a point and its first two nearest neighbors, assuming that the points are a realization from an homogeneous Poisson point process. We extend the TWO-NN theoretical framework by providing novel distributional results of consecutive and generic ratios of distances. These distributional results are then employed to derive intrinsic dimension estimators, called Cride and Gride. These novel estimators are more robust to noisy measurements than the TWO-NN and allow the study of the evolution of the intrinsic dimension as a function of the scale used to analyze the dataset. We discuss the properties of the different estimators with the help of simulation scenarios.
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