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Empirical Likelihood for Compound Poisson Processes
Authors:Zhouping Li  Xiping Wang  Wang Zhou
Institution:1. School of Mathematics and Statistics, Lanzhou University, , Lanzhou, 730000 China;2. Department of Statistics and Applied Probability, National University of Singapore, , Singapore, 117546 Singapore
Abstract:Let {N(t), t > 0} be a Poisson process with rate λ > 0, independent of the independent and identically distributed random variables urn:x-wiley:13691473:media:anzs678:anzs678-math-0001 with mean μ and variance urn:x-wiley:13691473:media:anzs678:anzs678-math-0002. The stochastic process urn:x-wiley:13691473:media:anzs678:anzs678-math-0003 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.
Keywords:compound Poisson process  confidence interval  empirical likelihood  Poisson process  studentization
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