有限状态下股票价格变化的马尔可夫链随机分析

I. U Amadi,, C. Ogbogbo, Bright O. Osu
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引用次数: 2

摘要

本文利用马尔可夫链模型的随机分析来检验有限状态下股票价格的形成。对独立股票的数据进行5步转移矩阵,其中转移矩阵复制了3状态转移概率矩阵的使用。这使我们能够提供获得每只股票预期平均收益率的精确条件。在研究的股票(1)、股票(2)、股票(3)和股票(4)中,还发现股票(1)的平均收益率最高:4.0548,股票(4)近期价格上涨的可能性最大:21%。这使投资者了解股票的行为,以便做出决策。从随机分析中发现,股票价格变化是无记忆的,满足马尔可夫链的性质。即收敛于某一点或在n=5处变得平稳,如S1:0.1967-0.2354,S2:0.2053-0.1913, s1:0.1972-0.2051和S4:0.2023-0.1835。此外,转换的所有状态都是通信的,并且都依赖于时间。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Stochastic analysis of stock price changes as markov chain in finite states
In this work, stochastic analysis of Markov chain model used to examine stock price formation in finite states. The data was subjected to 5-step transition matrix for independent stocks where transition matrix replicated the use of 3-states transition probability matrix. This enables us proffer precise condition of obtaining expected mean rate of return of each stock. Out of the four stocks studied, stock (1), stock (2), stock (3) and stock (4), it  was also discovered that stock (1) has the highest mean rate of return:4.0548 and Stock (4) has the best probability of price increasing in the near future:21%. This informs the investor about the behavior of the stocks for the purpose of decision making. From the stochastic analysis, it is revealed that stock price changes are memory-less satisfying the properties of Markov chain. i.e., it converges to a point or becomes stationary at n=5 ie S1:0.1967-0.2354,S2:0.2053-0.1913,S3:0.1972-0.2051 and S4:0.2023-0.1835. Also all states of the transition communicate and are all time dependent. 
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