Following the theory of information measures based on the cumulative distribution function, we propose the fractional generalized cumulative entropy, and its dynamic version. These entropies are particularly suitable to deal with distributions satisfying the proportional reversed hazard model. We study the connection with fractional integrals, and some bounds and comparisons based on stochastic orderings, that allow to show that the proposed measure is actually a variability measure. The investigation also involves various notions of reliability theory, since the considered dynamic measure is a suitable extension of the mean inactivity time. We also introduce the empirical generalized fractional cumulative entropy as a non-parametric estimator of the new measure. It is shown that the empirical measure converges to the proposed notion almost surely. A central limit theorem is also established under the exponential distribution. The stability of the empirical measure is addressed, too. An example of application to real data is finally provided.
翻译:根据基于累积分布函数的信息计量理论,我们提出分数通用累积累积酶及其动态版本。这些物种特别适合处理符合比例反向危险模型的分布。我们研究了与分数整体体的联系,以及基于随机顺序的某些界限和比较,从而可以表明拟议措施实际上是一种可变度。调查还涉及各种可靠性理论概念,因为所考虑的动态计量法是平均活动时间的适当延伸。我们还将经验性一般分数累积酶作为新计量法的非参数估测符。我们表明,经验性计量法几乎肯定与拟议概念一致。在指数分布法下也确立了一个中心限值。实验计量法的稳定性也得到了探讨。最后提供了实际数据应用的实例。