Title of article :
Higher-order multivariate Markov chains and their applications Original Research Article
Author/Authors :
Wai-Ki Ching، نويسنده , , Michael K. Ng، نويسنده , , Eric S. Fung، نويسنده ,
Issue Information :
روزنامه با شماره پیاپی سال 2008
Pages :
16
From page :
492
To page :
507
Abstract :
Markov chains are commonly used in modeling many practical systems such as queuing systems, manufacturing systems and inventory systems. They are also effective in modeling categorical data sequences. In a conventional nth order multivariate Markov chain model of s chains, and each chain has the same set of m states, the total number of parameters required to set up the model is O(mns). Such huge number of states discourages researchers or practitioners from using them directly. In this paper, we propose an nth-order multivariate Markov chain model for modeling multiple categorical data sequences such that the total number of parameters are of O(ns2m2). The proposed model requires significantly less parameters than the conventional one. We develop efficient estimation methods for the model parameters. An application to demand predictions in inventory control is also discussed.
Keywords :
Categorical data sequences , Multivariate Markov chains , Perron–Frobenius theorem
Journal title :
Linear Algebra and its Applications
Serial Year :
2008
Journal title :
Linear Algebra and its Applications
Record number :
825793
Link To Document :
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