Mettle Felix Okoe, Quaye Enoch Nii Boi, Laryea Ravenhill Adjetey
Department of Statistics, University of Ghana, Accra, Ghana.
Department of Banking and Finance, University of Professional Studies, Accra, Ghana.
Springerplus. 2014 Nov 6;3:657. doi: 10.1186/2193-1801-3-657. eCollection 2014.
Price volatilities make stock investments risky, leaving investors in critical position when uncertain decision is made. To improve investor evaluation confidence on exchange markets, while not using time series methodology, we specify equity price change as a stochastic process assumed to possess Markov dependency with respective state transition probabilities matrices following the identified state pace (i.e. decrease, stable or increase). We established that identified states communicate, and that the chains are aperiodic and ergodic thus possessing limiting distributions. We developed a methodology for determining expected mean return time for stock price increases and also establish criteria for improving investment decision based on highest transition probabilities, lowest mean return time and highest limiting distributions. We further developed an R algorithm for running the methodology introduced. The established methodology is applied to selected equities from Ghana Stock Exchange weekly trading data.
价格波动使股票投资具有风险,在做出不确定的决策时,投资者处于关键地位。为了提高投资者对交易市场的评估信心,在不使用时间序列方法的情况下,我们将股票价格变化指定为一个随机过程,假定该过程具有马尔可夫依赖性,其各自的状态转移概率矩阵遵循已确定的状态步伐(即下跌、稳定或上涨)。我们确定已识别的状态是相通的,并且这些链是无周期且遍历的,因此具有极限分布。我们开发了一种方法来确定股票价格上涨的预期平均回报时间,并根据最高转移概率、最低平均回报时间和最高极限分布建立改进投资决策的标准。我们进一步开发了一种R算法来运行所介绍的方法。所建立的方法应用于从加纳证券交易所每周交易数据中选取的股票。