The Log-gamma-logistic Regression Model: Estimation, Sensibility and Residual Analysis
- DOI
- 10.2991/jsta.2017.16.4.9How to use a DOI?
- Keywords
- Censored data; gamma-log-logistic distribution; regression model; residual analysis; sensitivity analysis.
- Abstract
In this paper, we formulate and develop a log-linear model using a new distribution called the log-gammalogistic. We show that the new regression model can be applied to censored data since it represents a parametric family of models that includes as sub-models several widely-known regression models and therefore can be used more effectively in the analysis of survival data. We obtain maximum likelihood estimates of the model parameters by considering censored data and evaluate local influence on the estimates of the parameters by taking different perturbation schemes. Some global-influence measurements are also investigated. Further, for different parameter settings, sample sizes and censoring percentages, various simulations are performed. In addition, the empirical distributions of some modified residuals are displayed and compared with the standard normal distribution. These studies suggest that the residual analysis usually performed in normal linear regression models can be extended to modified deviance residuals in the proposed regression model applied to censored data. We demonstrate that our extended regression model is very useful to the analysis of real data and may give more realistic fits than other special regression models.
- Copyright
- © 2018, the Authors. Published by Atlantis Press.
- Open Access
- This is an open access article distributed under the CC BY-NC license (http://creativecommons.org/licenses/by-nc/4.0/).
Cite this article
TY - JOUR AU - Elizabeth M. Hashimoto AU - Edwin M.M. Ortega AU - Gauss M. Cordeiro AU - G.G. Hamedani PY - 2017 DA - 2017/12/01 TI - The Log-gamma-logistic Regression Model: Estimation, Sensibility and Residual Analysis JO - Journal of Statistical Theory and Applications SP - 547 EP - 564 VL - 16 IS - 4 SN - 2214-1766 UR - https://doi.org/10.2991/jsta.2017.16.4.9 DO - 10.2991/jsta.2017.16.4.9 ID - Hashimoto2017 ER -