Regularized quantile regression under heterogeneous sparsity with application to quantitative genetic traits Journal Article


Authors: He, Q.; Kong, L.; Wang, Y.; Wang, S.; Chan, T. A.; Holland, E.
Article Title: Regularized quantile regression under heterogeneous sparsity with application to quantitative genetic traits
Abstract: Genetic studies often involve quantitative traits. Identifying genetic features that influence quantitative traits can help to uncover the etiology of diseases. Quantile regression method considers the conditional quantiles of the response variable, and is able to characterize the underlying regression structure in a more comprehensive manner. On the other hand, genetic studies often involve high-dimensional genomic features, and the underlying regression structure may be heterogeneous in terms of both effect sizes and sparsity. To account for the potential genetic heterogeneity, including the heterogeneous sparsity, a regularized quantile regression method is introduced. The theoretical property of the proposed method is investigated, and its performance is examined through a series of simulation studies. A real dataset is analyzed to demonstrate the application of the proposed method. © 2015 Elsevier B.V.
Keywords: genes; genetic engineering; regression analysis; variable selection; quantitative traits; genomic features; heterogeneous sparsity; quantile regression
Journal Title: Computational Statistics and Data Analysis
Volume: 95
ISSN: 0167-9473
Publisher: Elsevier B.V.  
Date Published: 2016-03-01
Start Page: 222
End Page: 239
Language: English
DOI: 10.1016/j.csda.2015.10.007
PROVIDER: scopus
PMCID: PMC5267342
PUBMED: 28133403
DOI/URL:
Notes: Export Date: 2 December 2015 -- Source: Scopus
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  1. Timothy Chan
    317 Chan