Autoreversibility: Exploiting Symmetries in Markov Chains

A. Marin, S. Rossi
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引用次数: 12

Abstract

The computation of the steady-state distribution of Continuous Time Markov Chains (CTMCs) may be a computationally hard problem when the number of states is very large. In order to overcome this problem, in the literature, several solutions have been proposed such as the reduction of the state space cardinality by lumping, the factorization based on product-form analysis and the application of the notion of reversibility. In this paper we address this problem by introducing the notion of auto reversibility which is defined as a symmetric co inductive relation which induces an equivalence relation among the chain's states. We show that all the states belonging to the same equivalence class share the same stationary probabilities and hence the computation of the steady-state distribution can be computationally more efficient. The definition of auto reversibility takes inspiration by the Kolmogorov's criteria for reversible processes and hence requires to test a property on all the minimal cycles of the chain. We show that the notion of auto reversibility is different from that of reversible processes and does not correspond to other state aggregation techniques such as lumping. Finally, we discuss the applicability of our results in the case of models defined in terms of a Markovian process Algebra such as the Performance Evaluation Process Algebra.
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自可逆:利用马尔可夫链中的对称性
连续时间马尔可夫链(ctmc)稳态分布的计算在状态数非常大的情况下是一个计算困难的问题。为了克服这一问题,在文献中提出了几种解决方案,如通过集总来减少状态空间基数,基于乘积形式分析的因子分解以及可逆性概念的应用。本文通过引入自可逆性的概念来解决这个问题,该概念被定义为一个对称的协归纳关系,它可以在链的状态之间推导出等价关系。我们证明了属于同一等价类的所有状态都具有相同的平稳概率,因此稳态分布的计算可以更有效地计算。自可逆性的定义是受柯尔莫哥洛夫可逆过程准则的启发,因此需要在链的所有最小环上测试一个性质。我们证明了自可逆性的概念不同于可逆过程的概念,并且不对应于其他状态聚合技术,如集总。最后,我们讨论了我们的结果在马尔可夫过程代数(如性能评估过程代数)定义的模型中的适用性。
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