A penalization method to estimate the intrinsic dimensionality of data

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Statistical Papers (e-ISSN: 1613-9798)

Abstract

We propose a novel penalization method for estimating the intrinsic dimensionality of data within a Probabilistic Principal Components Model, extending beyond the Gaussian case. Unlike existing approaches, our method is designed to handle non-normal data, providing a flexible alternative to traditional factor models. Our procedure identifies the dimension at which the eigenvalues of a scatter matrix stabilize. We establish the consistency of the procedure under mild conditions and demonstrate its robustness across a range of data distributions. A comparative analysis highlights its advantages over existing techniques, making it a valuable tool for dimensionality estimation without relying on distributional assumptions.

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Análisis de Datos, Data Analysis, Estadística, Statistics

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Forzani, L., Rodriguez, D. & Sued, M. A penalization method to estimate the intrinsic dimensionality of data. Stat Papers 66, 46 (2025). https://doi.org/10.1007/s00362-025-01667-0

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