Bayesian analysis of system failure data from engineering applications under a competing risks framework is considered when the cause of failure may not have been exactly identified but has only been narrowed down to a subset of all potential risks. In statistical literature, such data are termed "masked" failure data. In addition to masking, failure times could be right censored owing to the removal of prototypes at a prespecified time or could be interval censored in the case of periodically acquired readings. In this setting, a general Bayesian formulation is investigated that includes most commonly used parametric lifetime distributions and that is sufficiently flexible to handle complex forms of censoring. The methodology is illustrate...
Masked issues can emerge when dealing with competing risk data. Such issues are exemplified by the c...
In reliability engineering, data about failure events is often scarce. To arrive at meaningful estim...
In this article, a competing risk model is analyzed in the presence of complete and censored data wh...
We present a Bayesian approach for analysis of competing risks survival data with masked causes of f...
We present a Bayesian approach for analysis of competing risks survival data with masked causes of f...
The problem of analyzing series system lifetime data with masked or partial information on cause of ...
In reliability theory, the most important problem is to determine the reliability of a complex syste...
In the masked system lifetime data, the exact component that causes the system's failure is oft...
In ideal circumstances, failure time data for a K component series system contain the time to failur...
In a reliability or maintenance analysis of a complex system, it is important to be able to identify...
This research deals with the failure rate of the components of a complex system. The failure of a co...
The development of the theory and application of Monte Carlo Markov Chain methods, vast improvements...
In several studies in Survival Analysis, the cause of failure / death of items or individuals may be...
This paper deals with the Bayesian inference on step-stress partially accelerated life tests using T...
Standard survival analysis focuses on failure-time data that has one type of failure. Competing risk...
Masked issues can emerge when dealing with competing risk data. Such issues are exemplified by the c...
In reliability engineering, data about failure events is often scarce. To arrive at meaningful estim...
In this article, a competing risk model is analyzed in the presence of complete and censored data wh...
We present a Bayesian approach for analysis of competing risks survival data with masked causes of f...
We present a Bayesian approach for analysis of competing risks survival data with masked causes of f...
The problem of analyzing series system lifetime data with masked or partial information on cause of ...
In reliability theory, the most important problem is to determine the reliability of a complex syste...
In the masked system lifetime data, the exact component that causes the system's failure is oft...
In ideal circumstances, failure time data for a K component series system contain the time to failur...
In a reliability or maintenance analysis of a complex system, it is important to be able to identify...
This research deals with the failure rate of the components of a complex system. The failure of a co...
The development of the theory and application of Monte Carlo Markov Chain methods, vast improvements...
In several studies in Survival Analysis, the cause of failure / death of items or individuals may be...
This paper deals with the Bayesian inference on step-stress partially accelerated life tests using T...
Standard survival analysis focuses on failure-time data that has one type of failure. Competing risk...
Masked issues can emerge when dealing with competing risk data. Such issues are exemplified by the c...
In reliability engineering, data about failure events is often scarce. To arrive at meaningful estim...
In this article, a competing risk model is analyzed in the presence of complete and censored data wh...