4.7 Article

A New Quantile Regression Model and Its Diagnostic Analytics for a Weibull Distributed Response with Applications

Journal

MATHEMATICS
Volume 9, Issue 21, Pages -

Publisher

MDPI
DOI: 10.3390/math9212768

Keywords

likelihood methods; local influence diagnostics; Monte Carlo simulation; R software

Categories

Funding

  1. FONDECYT from the National Agency for Research and Development (ANID) of the Chilean government under the Ministry of Science, Technology, Knowledge, and Innovation [1200525, 11190636]
  2. ANID-Millennium Science Initiative Program [NCN17_059]

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Quantile regression is a better alternative for describing asymmetrically distributed data, especially when the response follows an asymmetrical distribution. This study proposes a new approach to quantile regression based on the Weibull distribution and discusses its practical application. The method presented in this work allows for a better understanding of the central tendency of the data.
Standard regression models focus on the mean response based on covariates. Quantile regression describes the quantile for a response conditioned to values of covariates. The relevance of quantile regression is even greater when the response follows an asymmetrical distribution. This relevance is because the mean is not a good centrality measure to resume asymmetrically distributed data. In such a scenario, the median is a better measure of the central tendency. Quantile regression, which includes median modeling, is a better alternative to describe asymmetrically distributed data. The Weibull distribution is asymmetrical, has positive support, and has been extensively studied. In this work, we propose a new approach to quantile regression based on the Weibull distribution parameterized by its quantiles. We estimate the model parameters using the maximum likelihood method, discuss their asymptotic properties, and develop hypothesis tests. Two types of residuals are presented to evaluate the model fitting to data. We conduct Monte Carlo simulations to assess the performance of the maximum likelihood estimators and residuals. Local influence techniques are also derived to analyze the impact of perturbations on the estimated parameters, allowing us to detect potentially influential observations. We apply the obtained results to a real-world data set to show how helpful this type of quantile regression model is.

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