Fully Bayesian approaches to analysis can be overly ambitious where there exist realistic limitations on the ability of experts to provide prior distributions for all relevant parameters. This research was motivated by situations where expert judgement exists to support the development of prior distributions describing the number of faults potentially inherent within a design but could not support useful descriptions of the rate at which they would be detected during a reliability-growth test. This paper develops inference properties for a reliability-growth model. The approach assumes a prior distribution for the ultimate number of faults that would be exposed if testing were to continue ad infinitum, but estimates the parameters of the in...
AbstractA new software reliability model based on the empirical Bayes estimate is developed. The num...
Especially when facing reliability data with limited information (e.g., a small number of failures),...
In this dissertation, we present Bayesian inference for models based on non-homogeneous Poisson proc...
Fully Bayesian approaches to analysis can be overly ambitious where there exist realistic limitation...
Often, the duration of a reliability growth development test is specified in advance and the decisio...
Engineers and practitioners contribute to society through their ability to apply basic scientific pr...
Past research into the phenomenon of reliability growth has emphasised modeling a major reliability ...
In reliability analyses recording the lifetimes of a sample of test units is not always possible, fo...
In reliability theory, the most important problem is to determine the reliability of a complex syste...
In this dissertation the estimation of reliability for a developmental process generating attribute ...
We study sample sizes for testing as required for Bayesian reliability demonstration in terms of fai...
Recent developments in technology permit detailed descriptions of system performance to be collected...
This research aims to present a Bayesian model for reliability growth projection and planning for di...
A sound methodology for the elicitation of subjective expert judgement is a pre-requisite for specif...
A methodology which calculates a point estimate and confidence intervals for system reliability dire...
AbstractA new software reliability model based on the empirical Bayes estimate is developed. The num...
Especially when facing reliability data with limited information (e.g., a small number of failures),...
In this dissertation, we present Bayesian inference for models based on non-homogeneous Poisson proc...
Fully Bayesian approaches to analysis can be overly ambitious where there exist realistic limitation...
Often, the duration of a reliability growth development test is specified in advance and the decisio...
Engineers and practitioners contribute to society through their ability to apply basic scientific pr...
Past research into the phenomenon of reliability growth has emphasised modeling a major reliability ...
In reliability analyses recording the lifetimes of a sample of test units is not always possible, fo...
In reliability theory, the most important problem is to determine the reliability of a complex syste...
In this dissertation the estimation of reliability for a developmental process generating attribute ...
We study sample sizes for testing as required for Bayesian reliability demonstration in terms of fai...
Recent developments in technology permit detailed descriptions of system performance to be collected...
This research aims to present a Bayesian model for reliability growth projection and planning for di...
A sound methodology for the elicitation of subjective expert judgement is a pre-requisite for specif...
A methodology which calculates a point estimate and confidence intervals for system reliability dire...
AbstractA new software reliability model based on the empirical Bayes estimate is developed. The num...
Especially when facing reliability data with limited information (e.g., a small number of failures),...
In this dissertation, we present Bayesian inference for models based on non-homogeneous Poisson proc...