2024
DOI: 10.1002/sim.10056
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Penalized weighted smoothed quantile regression for high‐dimensional longitudinal data

Yanan Song,
Haohui Han,
Liya Fu
et al.

Abstract: Quantile regression, known as a robust alternative to linear regression, has been widely used in statistical modeling and inference. In this paper, we propose a penalized weighted convolution‐type smoothed method for variable selection and robust parameter estimation of the quantile regression with high dimensional longitudinal data. The proposed method utilizes a twice‐differentiable and smoothed loss function instead of the check function in quantile regression without penalty, and can select the important c… Show more

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