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Strong Law of Large Numbers and Central Limit Theorems for Functionals of Inhomogeneous Semi-Markov Processes

机译:非均匀半马尔可夫过程的泛函大数定律和中心极限定理

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摘要

Limit theorems for functionals of classical (homogeneous) Markov renewal and semi-Markov processes have been known for a long time, since the pioneering work of Pyke Schaufele (Limit theorems for Markov renewal processes, Ann. Math. Statist., 35(4):1746-1764, 1964). Since then, these processes, as well as their time-inhomogeneous generalizations, have found many applications, for example, in finance and insurance. Unfortunately, no limit theorems have been obtained for functionals of inhomogeneous Markov renewal and semi-Markov processes as of today, to the best of the authors' knowledge. In this article, we provide strong law of large numbers and central limit theorem results for such processes. In particular, we make an important connection of our results with the theory of ergodicity of inhomogeneous Markov chains. Finally, we provide an application to risk processes used in insurance by considering a inhomogeneous semi-Markov version of the well-known continuous-time Markov chain model, widely used in the literature.
机译:自从Pyke Schaufele的开创性工作以来,经典(齐次)马尔可夫更新和半马尔可夫过程的极限定理早就为人所知(马尔可夫更新过程的极限定理,《数学统计》,第35(4)页)。 :1746-1764,1964)。从那时起,这些过程及其时间不均匀的概括已经发现了许多应用,例如在金融和保险中。不幸的是,就作者所知,到目前为止,尚未获得关于非均匀马尔可夫更新和半马尔可夫过程的泛函的极限定理。在本文中,我们提供了强大的大数定律和此类过程的中心极限定理。特别是,我们将我们的结果与非均质马尔可夫链的遍历性理论建立了重要联系。最后,通过考虑文献中广泛使用的众所周知的连续时间马尔可夫链模型的不均匀半马尔可夫版本,我们将其应用于保险业的风险过程。

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