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Journal of Biometrics & Biostatistics

ISSN: 2155-6180

Open Access

Nengjun Yi


Ryals Public Health Building 317F, Birmingham, AL 35294
Tanzania

Publications
  • Review Article
    Bayesian Methods for High Dimensional Linear Models
    Author(s): Himel Mallick and Nengjun YiHimel Mallick and Nengjun Yi

    In this article, we present a selective overview of some recent developments in Bayesian model and variable selection methods for high dimensional linear models. While most of the reviews in literature are based on conventional methods, we focus on recently developed methods, which have proven to be successful in dealing with high dimensional variable selection. First, we give a brief overview of the traditional model selection methods (viz. Mallow’s Cp, AIC, BIC, DIC), followed by a discussion on some recently developed methods (viz. EBIC, regularization), which have occupied the minds of many statisticians. Then, we review high dimensional Bayesian methods with a particular emphasis on Bayesian regularization methods, which have been used extensively in recent years. We conclude by briefly addressing the asymptotic behaviors of Bayesian variable selection methods for high dime.. Read More»
    DOI: 10.4172/2155-6180.S1-005

    Abstract PDF

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Citations: 3254

Journal of Biometrics & Biostatistics received 3254 citations as per Google Scholar report

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