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Stock price prediction based on chaotic hybrid particle swarm optimisation-RBF neural network

机译:基于混沌混合粒子群优化-RBF神经网络的股价预测

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The stock market is an important part of the capital market, which plays a significant role in optimising capital allocation, financing and increasing the value of assets and other areas. Hence, the correct model for estimating and predicting the stock price has a very important practical significance to provide investors with investment decision reference. In this paper, a novel chaotic hybrid PSO-based RBF neural network model (CHPSO-RBFNN) has been proposed for forecasting the stock price, which can effectively prevent the RBF neural network from the local minimum trap and provide great learning ability. The presented methodology was tested with stock 601998, and the results showed that CHPSO-RBFNN can improve the prediction of accuracy and a high efficient and accurate stock prediction model compared to the traditional RBFNN and PSO-RBFNN methods.
机译:股票市场是资本市场的重要组成部分,在优化资本配置,融资,增加资产价值和其他领域方面发挥着重要作用。因此,正确的股价预测模型对为投资者提供投资决策参考具有重要的现实意义。本文提出了一种基于混沌混合PSO的RBF神经网络模型(CHPSO-RBFNN),用于股票价格的预测,可以有效地防止RBF神经网络陷入局部最小陷阱,具有较强的学习能力。所提出的方法在股票601998上进行了测试,结果表明,与传统的RBFNN和PSO-RBFNN方法相比,CHPSO-RBFNN可以提高准确性的预测,并且可以提供高效,准确的股票预测模型。

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