When the observations are not quantified and are known to be less than a threshold value, the concept of left censoring needs to be included in the analysis of such datasets. In many real multi component lifetime systems left censored data is very common. The usual assumption that components which are part of a system, work independently seems not appropriate in a number of applications. For instance it is more realistic to acknowledge that the working status of a component affects the remaining components. When you have left-censored data, it is more meaningful to use the reversed hazard rate, proposed as a dual to the hazard rate. In this paper, we propose a model for left-censored bivariate data incorporating the dependence enjoyed among the components, based on a dynamic bivariate vector reversed hazard rate proposed in Gurler (1996). The properties of the proposed model is studied. The maximum likelihood method of estimation is shown to work well for moderately large samples. The Bayesian approach to the estimation of parameters is also presented. The complexity of the likelihood function is handled through the Metropolis - Hastings algorithm. This is executed with the MH adaptive package in r. Different interval estimation techniques of the parameters are also considered. Applications of this model is demonstrated by illustrating the usefulness of the model in analyzing real data.
翻译:当观测没有量化,而且已知观测值低于临界值时,左侧审查概念需要包括在分析这类数据集时。在许多真实的多组成部分生命周期系统中,遗留的受审查数据非常常见。通常的假设是,作为系统组成部分的部件,在一些应用中独立工作似乎并不合适。例如,承认一个组成部分的工作状态影响其余组成部分比较现实,如果有左层审查数据,则使用反转的危险率(作为危险率的双重值)更有意义。在本文件中,我们根据Gurler(1996年)中提议的动态双变量矢量反向危险率,提出一个包括各组成部分之间依赖性的左层审查双变量数据模型。研究拟议模型的特性,显示对中等大样品的最大可能性估算方法效果良好。还介绍了巴伊斯估计参数的方法,通过Metropolis - Snestriction 算法处理概率的复杂性功能。这个模型与MH调制组合一起执行,在rr. 中,用不同间隔矢量分析参数的方法也得到验证。