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Renewable energy company stock dynamics forecast in the period of sustainable development based on Fractal-FOA-LSTM

机译:可再生能源公司基于分形 - FOA-LSTM的可持续发展时期的动态预报

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In stock trend forecasting system, feature selection and model building are two major factors that affect prediction performance. In order to improve the accuracy of prediction and the stability of the model, a stock trend prediction model of Fractal-FOA-LSTM is proposed. Firstly, the features are selected by using the FOA (fruit fly algorithm) combined with the fractal dimension to reduce the redundancy of the features, and the selected indexes are used as the system input. And proposing a double input LSTM(long-short term memory) network prediction model and optimizing its parameters, it can select the best parameters for different data automatically. This paper test on 4 sets of UCI database and Shanghai Composite Index and proved the feature selection method is effective, through the empirical analysis of the Shanghai Composite Index and S&P500, and compared the results with SVM and PNN, verified the feasibility and superiority of the stock trend forecasting system base on fractal-FOA-LSTM.
机译:在库存趋势预测系统中,特征选择和模型建筑是影响预测性能的两个主要因素。为了提高预测的准确性和模型的稳定性,提出了分形 - FOA-LSTM的股票趋势预测模型。首先,通过使用FOA(果蝇算法)与分形尺寸组合的FOA(果蝇算法)选择特征,以减少特征的冗余,并且所选索引用作系统输入。并提出双输入LSTM(长短期内存)网络预测模型并优化其参数,它可以自动选择不同数据的最佳参数。本文在4套UCI数据库和上海复合指数上进行了研究,并证明了特征选择方法是有效的,通过对上海复合指数和S&amp的实证分析,并将结果与​​SVM和PNN进行了比较,验证了可行性和优越性分形 - FOA-LSTM的股票趋势预测系统基础。

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