Prediction of the Stock Prices at Uganda Securities Exchange Using the Exponential Ornstein-Uhlenbeck Model

Juma Kasozi, Erina Nanyonga, Fred Mayambala
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Abstract

We use the exponential Ornstein–Uhlenbeck model to predict the stock price dynamics over some finite time horizon of interest. The predictions are the key to the investors in a financial market because they provide vital reference information for decision making. We estimated all the parameters of the model (mean reversion speed, long-run mean, and the volatility) using the data from Stanbic Uganda Holdings Limited. We used the parameters to forecast the stock price and the associated mean absolute percentage error (MAPE). The predictions were compared against those by the ARMA-GARCH model. We also found the 95 % prediction intervals before and during the COVID-19 pandemic. Results indicate that the exponential Ornstein–Uhlenbeck stochastic model gives very accurate and reliable predictions with a MAPE of 0.4941 % . All the forecasted stock prices were within the prediction region established. This was not the case during the COVID-19 pandemic; the predicted stock prices are higher than the actual prices, indicating the severe impact COVID-19 inflicted on the stock market.
利用指数Ornstein-Uhlenbeck模型预测乌干达证券交易所股票价格
我们使用指数Ornstein-Uhlenbeck模型来预测有限时间范围内的股票价格动态。预测是投资者在金融市场上的关键,因为它们为决策提供了重要的参考信息。我们使用Stanbic乌干达控股有限公司的数据估计了模型的所有参数(均值回归速度、长期均值和波动性)。我们使用这些参数来预测股票价格和相关的平均绝对百分比误差(MAPE)。这些预测与ARMA-GARCH模型的预测结果进行了比较。我们还发现了COVID-19大流行之前和期间95%的预测间隔。结果表明,指数型Ornstein-Uhlenbeck随机模型预测结果准确可靠,MAPE为0.4941%。所有预测的股价均在建立的预测区间内。在2019冠状病毒病大流行期间并非如此;预测股价高于实际股价,说明新冠疫情对股市造成了严重影响。
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