2024
DOI: 10.1093/bib/bbae059
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High-dimensional generalized median adaptive lasso with application to omics data

Yahang Liu,
Qian Gao,
Kecheng Wei
et al.

Abstract: Recently, there has been a growing interest in variable selection for causal inference within the context of high-dimensional data. However, when the outcome exhibits a skewed distribution, ensuring the accuracy of variable selection and causal effect estimation might be challenging. Here, we introduce the generalized median adaptive lasso (GMAL) for covariate selection to achieve an accurate estimation of causal effect even when the outcome follows skewed distributions. A distinctive feature of our proposed m… Show more

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