We present a Bayesian approach for analysis of competing risks survival data with masked causes of failure. This approach is often used to assess the impact of covariates on the hazard functions when the failure time is exactly observed for some subjects but only known to lie in an interval of time for the remaining subjects. Such data, known as partly interval-censored data, usually result from periodic inspection in production engineering. In this study, Dirichlet and Gamma processes are assumed as priors for masking probabilities and baseline hazards. Markov chain Monte Carlo (MCMC) technique is employed for the implementation of the Bayesian approach. The effectiveness of the proposed approach is illustrated with simulated and productio...
In the competing risks model, a unit is exposed to several risks at the same time, but it is assumed...
In this paper our effort is to introduce the basic notions that constitute a competing risks models ...
The exponential distribution is the most widely used reliability analysis. This distribution is very...
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...
Bayesian analysis of system failure data from engineering applications under a competing risks frame...
In several studies in Survival Analysis, the cause of failure / death of items or individuals may be...
In a reliability or maintenance analysis of a complex system, it is important to be able to identify...
Abstract: A Bayesian approach is proposed for an accelerated failure time model with interval-censor...
In this article, a competing risk model is analyzed in the presence of complete and censored data wh...
Competing risks are frequently overlooked, and the event of interest is analyzed with conventional s...
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...
Masked issues can emerge when dealing with competing risk data. Such issues are exemplified by the c...
In reliability theory, the most important problem is to determine the reliability of a complex syste...
In the competing risks model, a unit is exposed to several risks at the same time, but it is assumed...
In this paper our effort is to introduce the basic notions that constitute a competing risks models ...
The exponential distribution is the most widely used reliability analysis. This distribution is very...
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...
Bayesian analysis of system failure data from engineering applications under a competing risks frame...
In several studies in Survival Analysis, the cause of failure / death of items or individuals may be...
In a reliability or maintenance analysis of a complex system, it is important to be able to identify...
Abstract: A Bayesian approach is proposed for an accelerated failure time model with interval-censor...
In this article, a competing risk model is analyzed in the presence of complete and censored data wh...
Competing risks are frequently overlooked, and the event of interest is analyzed with conventional s...
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...
Masked issues can emerge when dealing with competing risk data. Such issues are exemplified by the c...
In reliability theory, the most important problem is to determine the reliability of a complex syste...
In the competing risks model, a unit is exposed to several risks at the same time, but it is assumed...
In this paper our effort is to introduce the basic notions that constitute a competing risks models ...
The exponential distribution is the most widely used reliability analysis. This distribution is very...