Detection of Factors Affecting State Transition Based on Non-Homogeneous Markov Chain Model

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Abstract

The dependent and independent variables in traditional linear regression models are continuous numerical variables. When the dependent variable or independent variable is a discrete variable, the traditional linear regression model can no longer be used to analyze. To solve this problem, this article introduces the non-homogeneous Markov chain model. It introduces the mathematical definition of the non-homogeneous Markov chain model. And then this article uses Bayesian estimation method to derive posterior distribution of model parameters. Through the MCMC algorithm, we simulate an experiment, posterior means value of the parameters is estimated, and the estimation effect is found to be better. Finally, we analyze the impact of learning state transition about college students on the non-homogeneous Markov chain model. Influencing factors include whether to receive a scholarship and whether to serve as a class leader. In this paper, non-homogeneous Markov chain model is used to analyze and detect the impact of discrete variables on dependent variables. This is the major innovation in this article.

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Xiujuan, S., Hefei, L., Yong, L., & Bin, Y. (2021). Detection of Factors Affecting State Transition Based on Non-Homogeneous Markov Chain Model. IEEE Access, 9, 102490–102496. https://doi.org/10.1109/ACCESS.2021.3097363

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