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Integrating Harmony Search Algorithm and Deep Belief Network for Stock Price Prediction Model

机译:集成和谐搜索算法和深度信念网络的股价预测模型

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Stock price predicting is of great practical value in stock market trading and is the foundation of programmatic trading and high-frequency trading. Deep Belief Network (DBN) has been widely used in the field of stock market predicting. However, due to the lack of effective parallel training, empirical methods are still used in the application to determine the important network structure parameters in DBN, resulting in high calculation cost and low efficiency. This study puts forward a hybrid model of integrating metaheuristic Harmony Search (HS) algorithm and DBN. By setting up the self-learning mechanism of the network, the feedback evaluation of objective function is applied to let the network itself calculate the most appropriate structural parameters and improve the model prediction performance. Through the experimental verification on the 160 historical trading days of the Shanghai Composite Index, the mean absolute percentage error (MAPE) and return profit margin of the hybrid model presented in this paper are 1.56% and 16.04%, and the overall performance is better than the existing stock price prediction models.
机译:股票价格预测在股票交易中具有很大的实用价值,是程序交易和高频交易的基础。深度信念网络(DBN)已广泛应用于股票市场预测领域。但是,由于缺乏有效的并行训练,在实际应用中仍采用经验方法来确定DBN中重要的网络结构参数,导致计算成本高,效率低。提出了一种结合元启发式和声搜索(HS)算法和DBN的混合模型。通过建立网络的自学习机制,对目标函数进行反馈评估,可以使网络本身计算出最合适的结构参数,提高模型的预测性能。通过对上证综指160个历史交易日的实验验证,本文提出的混合模型的平均绝对百分比误差(MAPE)和收益率分别为1.56%和16.04%,总体表现优于现有的股价预测模型。

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