[Application of LASSO and Its Extended Method in Variable Selection of Regression Analysis]
Overview
Infectious Diseases
Public Health
Affiliations
Multicollinearity is an important issue affecting the results of regression analysis. LASSO developed in recent years has great advantages in selecting explanatory variables, processing high-dimensional data, and solving multicollinearity problems. This method adds a penalty term to the model estimation, which can compress the regression coefficients of some unnecessary variables to zero and then remove them from the model to achieve the purpose of variable screening. This paper focuses on the LASSO method and compares it with optimal subsets, ridge regression, adaptive LASSO, and elastic net results. It is found that both LASSO and adaptive LASSO have good performance in solving independent variable multicollinearity problems and enhancing model interpretation and prediction accuracy.
Early detection of feline chronic kidney disease via 3-hydroxykynurenine and machine learning.
Vanden Broecke E, Van Mulders L, De Paepe E, Paepe D, Daminet S, Vanhaecke L Sci Rep. 2025; 15(1):6875.
PMID: 40011503 PMC: 11865484. DOI: 10.1038/s41598-025-90019-x.
Yang Z, Kan W, Wang Z, Tang C, Cheng Y, Wang D Front Plant Sci. 2025; 15:1520457.
PMID: 39906238 PMC: 11790602. DOI: 10.3389/fpls.2024.1520457.
Li Z, Zhang Y, Fu G, Chen J, Zheng Q, Xian X Iran J Public Health. 2025; 54(1):24-35.
PMID: 39902368 PMC: 11787831. DOI: 10.18502/ijph.v54i1.17572.
Al-Obeidat F, Hafez W, Rashid A, Jallo M, Gador M, Cherrez-Ojeda I Front Big Data. 2025; 7:1402926.
PMID: 39897067 PMC: 11782132. DOI: 10.3389/fdata.2024.1402926.
Kurexi A, Yan R, Yuan T, Taati Z, Mijiti M, Li D BMC Surg. 2024; 24(1):403.
PMID: 39709364 PMC: 11662575. DOI: 10.1186/s12893-024-02711-w.