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Variable Selection With Prior Information for Generalized Linear Models via the Prior LASSO Method

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  • Yuan Jiang
  • Yunxiao He
  • Heping Zhang

Abstract

LASSO is a popular statistical tool often used in conjunction with generalized linear models that can simultaneously select variables and estimate parameters. When there are many variables of interest, as in current biological and biomedical studies, the power of LASSO can be limited. Fortunately, so much biological and biomedical data have been collected and they may contain useful information about the importance of certain variables. This article proposes an extension of LASSO, namely, prior LASSO (pLASSO), to incorporate that prior information into penalized generalized linear models. The goal is achieved by adding in the LASSO criterion function an additional measure of the discrepancy between the prior information and the model. For linear regression, the whole solution path of the pLASSO estimator can be found with a procedure similar to the least angle regression (LARS). Asymptotic theories and simulation results show that pLASSO provides significant improvement over LASSO when the prior information is relatively accurate. When the prior information is less reliable, pLASSO shows great robustness to the misspecification. We illustrate the application of pLASSO using a real dataset from a genome-wide association study. Supplementary materials for this article are available online.

Suggested Citation

  • Yuan Jiang & Yunxiao He & Heping Zhang, 2016. "Variable Selection With Prior Information for Generalized Linear Models via the Prior LASSO Method," Journal of the American Statistical Association, Taylor & Francis Journals, vol. 111(513), pages 355-376, March.
  • Handle: RePEc:taf:jnlasa:v:111:y:2016:i:513:p:355-376
    DOI: 10.1080/01621459.2015.1008363
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    References listed on IDEAS

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    9. Lam Tran & Kevin He & Di Wang & Hui Jiang, 2023. "A cross‐validation statistical framework for asymmetric data integration," Biometrics, The International Biometric Society, vol. 79(2), pages 1280-1292, June.

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