在COVID-19中使用神经模糊系统预测股指趋势

Muhammad Zubair Mumtaz
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引用次数: 0

摘要

预测股票市场的涨落是一项复杂而具有挑战性的工作,因为股票价格的行为具有破坏性和不确定性。新冠肺炎疫情就是一个例子,由于商业活动和交易受到严重影响,对全球股市产生了巨大影响。因此,能够预测股市在危机时期的表现是很重要的。我们发现,在报告的冠状病毒阳性病例较多的国家,股市的回报率最低。本研究采用自适应神经模糊推理系统(ANFIS),包括一个控制器和股票市场过程,以预测所选股票指数的行为。在训练ANFIS并评估结果数据后,我们估计了统计误差,发现100次训练可以提供稍微更好的结果。为了测试我们的结果的准确性,我们使用命中率成功,并报告了欧洲模糊系统预测股票市场趋势的平均准确率为65.84%,比文献中报道的早期技术有了改进。最后,我们使用买入并持有策略和神经模糊系统计算收益率,并利用所提出的方法识别市场指标的表现
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Predicting Stock Indices Trends using Neuro-fuzzy systems in COVID-19
Predicting the ebb and flow of stock markets is a complex and challenging exercise owing to the disruptive and uncertain behavior of stock prices. The COVID-19 pandemic is an example of an event that, had a drastic impact on global stock markets, due to business activities and trading being severely affected. It is important, therefore, to be able to predict how stock markets behave in a crisis period. We find that stock markets obtain the worst returns in countries where there are higher reported positive cases of coronavirus. This study employs adaptive neuro-fuzzy inference systems (ANFIS), comprising of a controller and the stock market process, to predict the behavior of selected stock indices. After training ANFIS and evaluating the resultant data, we estimate statistical errors and found that 100 training epochs provide marginally better results. To test the accuracy of our results, we used hit rate success and report that the neuro-fuzzy system predicts stock market trends with an average accuracy of 65.84%, an improvement over earlier techniques reported in the literature. Finally, we compute the rate of return using a buy-and-hold strategy and a neuro-fuzzy system, and identify that market indices outperform by employing the proposed method
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