Bayesian LASSO Quantile Regression: An Application to the Modeling of Low Birth Weight

Yanuar, Ferra Bayesian LASSO Quantile Regression: An Application to the Modeling of Low Birth Weight. EAI.

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Abstract

The modeling of low birth weight using ordinary least square is not appropriate and inefficient. The low birth weight data violates the normality assumption since the data is right skewed. The data usually contains outliers as well. Many researchers used quantile regression approach to model this case but this method has limitation. The limitation of this approach is need moderate to big sample size. This study aims to combine the quantile regression with Bayesian LASSO approach to model the low birth weight. Bayesian method has ability to model small sample size since it involves the information related to data (known as likelihood function) and prior information about the parameter tobe estimated (prior distribution). This study demonstrated that Bayesian quantile regression and Bayesian LASSO (Least Absolute Shrinkage Selection Operator)quantile regression could yield the acceptable model of low birth weight case based on indicators of goodness of fit model. Bayesian LASSO quantile regression produced better estimated parameter values since it yielded shorter 95% Bayesian credible interval than Bayesian quantile regression.

Item Type: Article
Subjects: A General Works > AC Collections. Series. Collected works
Divisions: Fakultas Matematika dan Ilmu Pengetahuan Alam > Matematika
Depositing User: Aidinil Zetra
Date Deposited: 24 May 2022 06:43
Last Modified: 24 May 2022 06:43
URI: http://repo.unand.ac.id/id/eprint/46429

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