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EMPIRICAL LIKELIHOOD FOR COMPOUND POISSON PROCESSES

机译:复合Poisson过程的经验似然

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摘要

Let {N(r), λ > 0} be a Poisson process with rate λ > 0, independent of the independent and identically distributed random variables X_1, X_2, ... with mean μ and variance σ~2. The stochastic process ∑_(j=1)~(N(t))X_j is then called a compound Poisson process and has a wide range of applications in, for example, physics, mining, finance and risk management. Among these applications, the average number of objects, which is defined to be λμ, is an important quantity. Although many papers have been devoted to the estimation of λμ in the literature, in this paper, we use the well-known empirical likelihood method to construct confidence intervals. The simulation results show that the empirical likelihood method often outperforms the normal approximation and Edgeworth expansion approaches in terms of coverage probabilities. A real data set concerning coal-mining disasters is analyzed using these methods.
机译:令{N(r),λ> 0}是一个速率为λ> 0的泊松过程,与具有均值μ和方差σ〜2的独立且均匀分布的随机变量X_1,X_2 ...无关。随机过程∑_(j = 1)〜(N(t))X_j称为复合泊松过程,在物理,采矿,金融和风险管理等领域具有广泛的应用。在这些应用中,被定义为λμ的平均物体数量是一个重要的数量。尽管在文献中已经有很多论文专门针对λμ的估计,但是在本文中,我们还是使用众所周知的经验似然方法来构建置信区间。仿真结果表明,在覆盖率方面,经验似然法通常优于常规近似法和Edgeworth展开法。使用这些方法分析了有关煤矿灾害的真实数据集。

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