Autori: Basu, Ayanendranath, Pardo, Leandro, Ghosh, Abhik
Titolo: Robust adaptive LASSO in high-dimensional logistic regression
Periodico: Statistical methods & applications : Journal of the Italian Statistical Society
Anno: 2024 - Volume: 33 - Fascicolo: 5 - Pagina iniziale: 1217 - Pagina finale: 1249

Penalized logistic regression is extremely useful for binary classification with large number of covariates (higher than the sample size), having several real life applications, including genomic disease classification. However, the existing methods based on the likelihood loss function are sensitive to data contamination and other noise and, hence, robust methods are needed for stable and more accurate inference. In this paper, we propose a family of robust estimators for sparse logistic models utilizing the popular density power divergence based loss function and the general adaptively weighted LASSO penalties. We study the local robustness of the proposed estimators through its influence function and also derive its oracle properties and asymptotic distribution. With extensive empirical illustrations, we demonstrate the significantly improved performance of our proposed estimators over the existing ones with particular gain in robustness. Our proposal is finally applied to analyse four different real datasets for cancer classification, obtaining robust and accurate models, that simultaneously performs gene selection and patient classification.




SICI: 1618-2510(2024)33:5<1217:RALIHL>2.0.ZU;2-E

Esportazione dati in Refworks (solo per utenti abilitati)

Record salvabile in Zotero

Biblioteche ACNP che possiedono il periodico
Nel rispetto della Direttiva 2009/136/CE, ti informiamo che il nostro sito utilizza i cookies. Se continui a navigare sul sito, accetti espressamente il loro utilizzo.