Modeling Stock Index Using Finite State Markov Chain

H. H. Mirza, M. Nazir, G. Ali
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Abstract

Existing stock price models are based on time series methodologies which are hard to estimate and involves lots of assumptions. This study, in contrast, assumes that the stock prices follow stochastic process that possesses Markov dependency with finite state transition probabilities. For this purpose, daily stock index data from Pakistan Stock Exchange (PSE) is collected from 2010-2015 and categorized in to 10 state spaces. Based on the results of state transition model, the study highlights the most probable state of return and also its transition into another state. Further, the study used Monte Carlo method of stock index simulations both Markov chain and original stock index. The analysis shows that it is possible to model and forecast stock index by capturing Markov process. The results of the study are helpful for investors in selecting right time of making investment and for academician to think about more sophisticated methods of state identification.
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用有限状态马尔可夫链建模股票指数
现有的股票价格模型是基于时间序列方法的,难以估计且涉及大量假设。相反,本研究假设股票价格遵循具有有限状态转移概率的马尔可夫依赖的随机过程。为此,我们收集了2010-2015年巴基斯坦证券交易所(PSE)的每日股票指数数据,并将其分为10个州。在状态转移模型的基础上,突出了最可能的回归状态及其向另一状态的过渡。在此基础上,利用蒙特卡罗方法模拟了股指的马尔可夫链和原始股指。分析表明,利用马尔科夫过程对股票指数进行建模和预测是可行的。研究结果有助于投资者选择正确的投资时机,也有助于学者思考更复杂的状态识别方法。
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