Inference and diagnostics for generalized exponential distribution with fixed and time-dependent covariates and interval censored data
The aim of this research is to analyse the Generalized Exponential distribution in the presence of interval-censored data with fixed and time-dependent covariates. The analysis starts with a thorough simulation study to compare the performance of the estimation procedure by evaluating the bias, s...
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Main Author: | |
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Format: | Thesis |
Language: | English |
Published: |
2022
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Subjects: | |
Online Access: | http://psasir.upm.edu.my/id/eprint/113994/1/113994.pdf http://psasir.upm.edu.my/id/eprint/113994/ http://ethesis.upm.edu.my/id/eprint/18051 |
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Summary: | The aim of this research is to analyse the Generalized Exponential distribution in the
presence of interval-censored data with fixed and time-dependent covariates. The
analysis starts with a thorough simulation study to compare the performance of the
estimation procedure by evaluating the bias, standard error (SE) and root mean square
error (RMSE) of the maximum likelihood estimates (MLE) with and without
imputation at various censoring proportions and sample sizes. The results clearly
indicate that the estimates, based on the random imputation method, work slightly
better than the traditional method when dealing with the interval censored data and
fixed covariate. Thereafter, we assessed the goodness of fit for this model by
comparing the performances of the Cox-Snell and modified Cox-Snell residuals based
on the empirical geometric and harmonic means via simulation study at various
censoring proportions and sample sizes. The results indicate that the residuals based on
the harmonic mean perform slightly better than other residuals, especially when sample
sizes in the data are high.
Subsequently, the Generalized Exponential distribution is further extended to
incorporate time-dependent covariates with interval-censored data as well as
uncensored data. The model is then investigated thoroughly via a comprehensive
simulation study at various sample sizes and attendance probabilities when the timedependent
covariate has two levels, before and after update time. Following that,
comparison using the values of RMSE is made when a fixed covariate model was fitted
wrongly to a data set with time-dependent covariate. The results clearly indicate that
the estimates, based on the time dependent covariate, work slightly better than the time
dependent covariate when dealing with the interval censored data time dependent
covariate. Then we studied two methods of constructing confidence interval estimates
namely the Wald and jackknife for the parameters of this model with time-dependent
covariate and conclusions were drawn based on the results of the coverage probability
study. The results indicate that the Wald technique works slightly better than the
jackknife technique when dealing with interval censored data and time dependent
covariate.
Finally, the methods in the simulation study were applied to real interval-censored data
from Diabetic Nephropathy (DN) study with fixed and time-dependent covariates. The
results indicate that the Generalized Exponential distribution performs well with
interval censored data, fixed, and time-dependent covariates while providing a good fit
for dataset. The modified Cox-Snell residual using the harmonic mean was also very
useful at assessing the model adequacy using fixed covariates. The Wald confidence
interval outperformed the jackknife confidence interval estimation technique was
applied to the parameters of model and was useful at indicating the significance of both
the fixed and time-dependent covariate parameters. |
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