Parameter Estimation and Prediction of Future Failures in the Log-Logistic Distributions Based on Hybrid-Censored Data
Abstract
The main purpose of this thesis is to study the prediction of future observations of a 
Log-Logistic distribution from Hybrid Censored Samples. We will study parameter 
point estimation, interval estimation, different point predictors will be formed such as 
Maximum Likelihood Predictor (MLP), Best Unbiased Predictor (BUP), and Conditional 
Median Predictor (CMP). Different Prediction intervals will be constructed such as 
Intervals based on Pivotal quantities, and High-Density Intervals (HDI). A simulation 
study will be run using the R software to investigate and compare the performance of 
all point predictors and prediction intervals. It is observed that the (BUP) is the best 
point predictor and the (HDI) is the best prediction interval.
DOI/handle
http://hdl.handle.net/10576/15306Collections
- Mathematics, Statistics & Physics [35 items ]


