Analysis of Investment Returns as Markov Chain Random Walk

F. Mettle, Emmanuel Aidoo, Carlos Oko Narku Dowuona, Louis Agyekum
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Abstract

The main objective of this paper is to analyse investment returns using a stochastic model and inform investors about the best stock market to invest in. To this effect, a Markov chain random walk model was successfully developed and implemented on 450 monthly market returns data spanning from January 1976 to December 2020 for Canada, India, Mexico, South Africa, and Switzerland obtained from the Federal Reserves of the Bank of St. Louis. The limiting state probabilities and six-month moving crush probabilities were estimated for each country, and these were used to assess the performance of the markets. The Mexican market was observed to have the least probabilities for all the negative states, while the Indian market recorded the largest limiting probabilities. In the case of positive states, the Mexican market recorded the highest limiting probabilities, while the Indian market recorded the lowest limiting probabilities. The results showed that the Mexican market performed better than the others over the study period, whilst India performed poorly. These findings provide crucial information for market regulators and investors in setting regulations and decision-making in investment.
马尔可夫链随机漫步的投资回报分析
本文的主要目的是利用随机模型分析投资回报,并告知投资者投资的最佳股票市场。为此,本文成功开发了马尔科夫链随机漫步模型,并在加拿大、印度、墨西哥、南非和瑞士从圣路易斯银行联邦储备局获得的从 1976 年 1 月到 2020 年 12 月的 450 个月市场回报数据上进行了应用。对每个国家的极限状态概率和六个月移动碾压概率进行了估算,并将其用于评估市场表现。据观察,墨西哥市场在所有负面状态下的概率最小,而印度市场的极限概率最大。在积极状态下,墨西哥市场的限制概率最高,而印度市场的限制概率最低。结果表明,在研究期间,墨西哥市场的表现优于其他市场,而印度市场的表现较差。这些研究结果为市场监管者和投资者制定投资法规和决策提供了重要信息。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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