CNN-LSTM network fund price prediction method based on attention combination
A price forecasting and attention technology, applied in market forecasting, biological neural network model, finance, etc., can solve problems of little practical significance and low precision, and achieve the effect of reliable forecasting model and good algorithm robustness
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[0044] Below in conjunction with accompanying drawing and specific embodiment the present invention is described in further detail:
[0045] The present invention provides a CNN-LSTM network fund price prediction method based on combined attention, which has high prediction accuracy, can realize multi-step prediction of fund prices, and provides reliable reference information for investors.
[0046] As an embodiment of the present invention, the fund sample feature extraction method is as follows figure 1 , a CNN-LSTM network fund price prediction method framework based on combined attention such as figure 2 As shown, the specific steps are as follows;
[0047] Step1: Fund platform data collection
[0048] Collect the historical data of the fund stock in the past two years from the online fund platform, and select the closing price, opening price, daily highest price, daily lowest price, trading volume, turnover, turnover rate, transaction times, and daily increase of the f...
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