Likelihood Inference for Step Stress Partially Accelerated Life Test Model with Type I Progressively Hybrid Censored Data from Generalized Exponential Distribution
Date
2021-01Metadata
Show full item recordAbstract
This thesis considers the statistical inference on the generalized exponential
distribution parameters in presence of progressive Type-I censoring under partially
accelerated life test. The maximum likelihood method is used to estimate the unknown
parameters in the case of step-stress partially accelerated life tests. The performance
of the estimators is investigated using simulation for certain simulation designs and
sample sizes. The biases and mean square errors of the maximum-likelihood
estimators are computed to assess the performance of the point estimators whereas
coverage probability and expected length is used to assess the performance of the
interval estimators. These interval estimators are derived using three classical
approaches namely; asymptotic, Bootstrap percentile interval, and Bootstrap-t
confidence intervals. Comparison between these three methods is also conducted.
Further, reliability functions are derived for various time-t and the point and interval
estimators are investigated. To illustrate the above, a data analysis is conducted.
Finally, conclusions and ideas for possible future research are discussed in this thesis
DOI/handle
http://hdl.handle.net/10576/24968Collections
- Mathematics, Statistics & Physics [33 items ]