Statistical Quantile Learning for Large, Nonlinear, and Additive Latent Variable Models.

Détails

Ressource 1Télécharger: SQL.pdf (2976.08 [Ko])
Etat: Public
Version: de l'auteur⸱e
Licence: Non spécifiée
ID Serval
serval:BIB_0622E4AB21A0
Type
Autre: (aucun autre type ne convient)
Collection
Publications
Institution
Titre
Statistical Quantile Learning for Large, Nonlinear, and Additive Latent Variable Models.
Auteur⸱e⸱s
Bodelet Julien, Blanc Guillaume, Shan Jiajun, Terrera Graciela M., Chén Oliver Y
Date de publication
29/12/2023
Langue
anglais
Résumé
The studies of large-scale, high-dimensional data in fields such as genomics and neuroscience have injected new insights into science. Yet, despite advances, they are confronting several chal- lenges, often simultaneously: lack of interpretability, nonlinearity, slow computation, inconsistency and uncertain convergence, and small sample sizes compared to high feature dimensions. Here, we propose a relatively simple, scalable, and consistent nonlinear dimension reduction method that can potentially address these issues in unsupervised settings. We call this method Statistical Quantile Learning (SQL) because, methodologically, it leverages on a quantile approximation of the latent variables together with standard nonparametric techniques (sieve or penalyzed methods). We show that estimating the model simplifies into a convex assignment matching problem; we derive its asymptotic properties; we show that the model is identifiable under few conditions. Compared to its linear competitors, SQL explains more variance, yields better separation and explanation, and delivers more accurate outcome prediction. Compared to its nonlinear competitors, SQL shows considerable advantage in interpretability, ease of use and computations in large-dimensional set- tings. Finally, we apply SQL to high-dimensional gene expression data (consisting of 20, 263 genes from 801 subjects), where the proposed method identified latent factors predictive of five cancer types. The SQL package is available at https://github.com/jbodelet/SQL.
Mots-clé
High-dimensionality, Nonlinear model, Latent variable model, Generative models, Dimension reduction, GAN, VAE, Nonparametric estimation, Assignment Matching, Prediction.
Création de la notice
11/01/2024 18:05
Dernière modification de la notice
19/01/2024 7:12
Données d'usage