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Dive into the research topics where Aldo M. Garay is active.

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Featured researches published by Aldo M. Garay.


Computational Statistics & Data Analysis | 2011

On estimation and influence diagnostics for zero-inflated negative binomial regression models

Aldo M. Garay; Elizabeth M. Hashimoto; Edwin M. M. Ortega; Victor H. Lachos

The zero-inflated negative binomial model is used to account for overdispersion detected in data that are initially analyzed under the zero-inflated Poisson model. A frequentist analysis, a jackknife estimator and a non-parametric bootstrap for parameter estimation of zero-inflated negative binomial regression models are considered. In addition, an EM-type algorithm is developed for performing maximum likelihood estimation. Then, the appropriate matrices for assessing local influence on the parameter estimates under different perturbation schemes and some ways to perform global influence analysis are derived. In order to study departures from the error assumption as well as the presence of outliers, residual analysis based on the standardized Pearson residuals is discussed. The relevance of the approach is illustrated with a real data set, where it is shown that zero-inflated negative binomial regression models seems to fit the data better than the Poisson counterpart.


Journal of Applied Statistics | 2015

Bayesian analysis of censored linear regression models with scale mixtures of normal distributions

Aldo M. Garay; Heleno Bolfarine; Victor H. Lachos; Celso Rômulo Barbosa Cabral

As is the case of many studies, the data collected are limited and an exact value is recorded only if it falls within an interval range. Hence, the responses can be either left, interval or right censored. Linear (and nonlinear) regression models are routinely used to analyze these types of data and are based on normality assumptions for the errors terms. However, those analyzes might not provide robust inference when the normality assumptions are questionable. In this article, we develop a Bayesian framework for censored linear regression models by replacing the Gaussian assumptions for the random errors with scale mixtures of normal (SMN) distributions. The SMN is an attractive class of symmetric heavy-tailed densities that includes the normal, Student-t, Pearson type VII, slash and the contaminated normal distributions, as special cases. Using a Bayesian paradigm, an efficient Markov chain Monte Carlo algorithm is introduced to carry out posterior inference. A new hierarchical prior distribution is suggested for the degrees of freedom parameter in the Student-t distribution. The likelihood function is utilized to compute not only some Bayesian model selection measures but also to develop Bayesian case-deletion influence diagnostics based on the q-divergence measure. The proposed Bayesian methods are implemented in the R package BayesCR. The newly developed procedures are illustrated with applications using real and simulated data.


Statistical Methods in Medical Research | 2017

Censored linear regression models for irregularly observed longitudinal data using the multivariate-t distribution

Aldo M. Garay; Luis M. Castro; Jacek Leskow; Victor H. Lachos

In acquired immunodeficiency syndrome (AIDS) studies it is quite common to observe viral load measurements collected irregularly over time. Moreover, these measurements can be subjected to some upper and/or lower detection limits depending on the quantification assays. A complication arises when these continuous repeated measures have a heavy-tailed behavior. For such data structures, we propose a robust structure for a censored linear model based on the multivariate Student’s t-distribution. To compensate for the autocorrelation existing among irregularly observed measures, a damped exponential correlation structure is employed. An efficient expectation maximization type algorithm is developed for computing the maximum likelihood estimates, obtaining as a by-product the standard errors of the fixed effects and the log-likelihood function. The proposed algorithm uses closed-form expressions at the E-step that rely on formulas for the mean and variance of a truncated multivariate Student’s t-distribution. The methodology is illustrated through an application to an Human Immunodeficiency Virus-AIDS (HIV-AIDS) study and several simulation studies.


Journal of Statistical Computation and Simulation | 2014

Statistical diagnostics for nonlinear regression models based on scale mixtures of skew-normal distributions

Aldo M. Garay; Victor H. Lachos; Filidor V. Labra; Edwin M. M. Ortega

The purpose of this paper is to develop diagnostics analysis for nonlinear regression models (NLMs) under scale mixtures of skew-normal (SMSN) distributions introduced by Garay et al. [Nonlinear regression models based on SMSN distributions. J. Korean Statist. Soc. 2011;40:115–124]. This novel class of models provides a useful generalization of the symmetrical NLM [Vanegas LH, Cysneiros FJA. Assessment of diagnostic procedures in symmetrical nonlinear regression models. Comput. Statist. Data Anal. 2010;54:1002–1016] since the random terms distributions cover both symmetric as well as asymmetric and heavy-tailed distributions such as the skew-t, skew-slash, skew-contaminated normal distributions, among others. Motivated by the results given in Garay et al. [Nonlinear regression models based on SMSN distributions. J. Korean Statist. Soc. 2011;40:115–124], we presented a score test for testing the homogeneity of the scale parameter and its properties are investigated through Monte Carlo simulations studies. Furthermore, local influence measures and the one-step approximations of the estimates in the case-deletion model are obtained. The newly developed procedures are illustrated considering a real data set.


Journal of Applied Statistics | 2015

Bayesian estimation and case influence diagnostics for the zero-inflated negative binomial regression model

Aldo M. Garay; Victor H. Lachos; Heleno Bolfarine

In recent years, there has been considerable interest in regression models based on zero-inflated distributions. These models are commonly encountered in many disciplines, such as medicine, public health, and environmental sciences, among others. The zero-inflated Poisson (ZIP) model has been typically considered for these types of problems. However, the ZIP model can fail if the non-zero counts are overdispersed in relation to the Poisson distribution, hence the zero-inflated negative binomial (ZINB) model may be more appropriate. In this paper, we present a Bayesian approach for fitting the ZINB regression model. This model considers that an observed zero may come from a point mass distribution at zero or from the negative binomial model. The likelihood function is utilized to compute not only some Bayesian model selection measures, but also to develop Bayesian case-deletion influence diagnostics based on q-divergence measures. The approach can be easily implemented using standard Bayesian software, such as WinBUGS. The performance of the proposed method is evaluated with a simulation study. Further, a real data set is analyzed, where we show that ZINB regression models seems to fit the data better than the Poisson counterpart.


Workshop on Cyclostationary Systems and Their Applications | 2015

Imputation of Missing Observations for Heavy Tailed Cyclostationary Time Series

Christiana Drake; Jacek Leskow; Aldo M. Garay

The aim of our research is to provide algorithms of data imputation for a cyclostationary time series with heavy tails. We assume that time series \({Y_t}\) of interest is K-dependent but also heavy tails of the form: \({Y_t} = {X_t} \cdot {c_t}\), where \(c_t\) is the periodic function and \(X_t\) is a heavy tailed stationary process.We use the multivariate t- distribution with the covariance matrix \(\Sigma \) of order \(2\left( K-1\right) \times 2\left( K-1\right) \). Moreover, we assume that the number of degrees of freedom \(\nu \) is fixed and \(2<\nu \le 6\).We use the periodic sequence \(\left\{ c_t\right\} \) with the period \(H\) as the periodic amplitude imposed over the stationary background time series.We propose four imputation algorithms based on the properties of the multivariate t-distribution. Using simulations, we compare the performance of those algorithms.


Journal of Applied Statistics | 2018

Likelihood-based inference for censored linear regression models with scale mixtures of skew-normal distributions

Thalita do Bem Mattos; Aldo M. Garay; Victor H. Lachos

ABSTRACT In many studies, the data collected are subject to some upper and lower detection limits. Hence, the responses are either left or right censored. A complication arises when these continuous measures present heavy tails and asymmetrical behavior; simultaneously. For such data structures, we propose a robust-censored linear model based on the scale mixtures of skew-normal (SMSN) distributions. The SMSN is an attractive class of asymmetrical heavy-tailed densities that includes the skew-normal, skew-t, skew-slash, skew-contaminated normal and the entire family of scale mixtures of normal (SMN) distributions as special cases. We propose a fast estimation procedure to obtain the maximum likelihood (ML) estimates of the parameters, using a stochastic approximation of the EM (SAEM) algorithm. This approach allows us to estimate the parameters of interest easily and quickly, obtaining as a byproducts the standard errors, predictions of unobservable values of the response and the log-likelihood function. The proposed methods are illustrated through real data applications and several simulation studies.


Statistics & Probability Letters | 2011

Heteroscedastic nonlinear regression models based on scale mixtures of skew-normal distributions

Victor H. Lachos; Dipankar Bandyopadhyay; Aldo M. Garay


Journal of The Korean Statistical Society | 2011

Nonlinear regression models based on scale mixtures of skew-normal distributions

Aldo M. Garay; Victor H. Lachos; Carlos A. Abanto-Valle


Journal of Statistical Planning and Inference | 2012

Estimation and diagnostics for heteroscedastic nonlinear regression models based on scale mixtures of skew-normal distributions

Filidor V. Labra; Aldo M. Garay; Victor H. Lachos; Edwin M. M. Ortega

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Filidor V. Labra

State University of Campinas

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Carlos A. Abanto-Valle

Federal University of Rio de Janeiro

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Larissa A. Matos

State University of Campinas

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Monique B. Massuia

State University of Campinas

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Thais S. Barbosa

State University of Campinas

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