Hybrid multiple structural break model for stock price trend prediction

Sheelapriya Gopal, Murugesan Ramasamy
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引用次数: 5

Abstract

Because of the noises from the internal and external factors, the uncertainty increases in the financial market. The challenges of nonlinearities, volatility clusters, and multiple structural breaks which entail risk. Due to the risk, the prediction task becomes more complex. First, this work proposes a hybrid model to predict the one-day future price for the stocks; MSFT, Apple, Goldman Sachs and JP Morgan use the Markov switching model coupled with radial basis function network for prediction. Second, this paper forecasts the buy/sell trading strategy using the proposed hybrid method. Also, this paper explores the risk of investment decisions and the trading performance based on different value at risk (VaR) methods. Finally, by comparing the proposed model results with the pure linear and non-linear models, the prediction efficiency is evaluated. The experimental results indicate the investment risk, and the investment trading strategy provides a better accuracy with the best investment decision for the selected stocks.

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股票价格走势预测的混合多重结构断裂模型
由于内外因素的干扰,金融市场的不确定性增加。非线性、波动簇和多重结构断裂带来的风险带来的挑战。由于风险的存在,预测任务变得更加复杂。首先,本文提出了一个混合模型来预测股票未来一天的价格;微软、苹果、高盛和摩根大通使用马尔可夫切换模型结合径向基函数网络进行预测。其次,利用本文提出的混合方法对买卖交易策略进行预测。此外,本文还探讨了基于不同风险价值(VaR)方法的投资决策风险和交易绩效。最后,通过将模型结果与纯线性和非线性模型进行比较,评价了模型的预测效率。实验结果表明,该投资交易策略对所选股票具有较好的准确性和最佳的投资决策。
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