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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

Inactive Publication Date: 2020-09-04
JINLING INST OF TECH
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AI Technical Summary

Problems solved by technology

[0004] Traditional fund price forecasting models use average line theory, K-line diagram analysis, regression analysis, gray forecasting methods, ARIMA models, multi-core support vector machines and Markov chains, etc. However, since fund prices are affected by multiple factors, and these The factors show strong nonlinear characteristics, which makes the accuracy of these traditional linear fund forecasting models not high
In addition, most studies or methods are aimed at single-time-step forecasting of fund prices (that is, only predicting the fund price of the next day, month or year), which does not have much practical significance, because investors focus on a long period of time in the future price in period

Method used

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  • CNN-LSTM network fund price prediction method based on attention combination
  • CNN-LSTM network fund price prediction method based on attention combination
  • CNN-LSTM network fund price prediction method based on attention combination

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Embodiment Construction

[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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Abstract

The invention discloses a CNN-LSTM network fund price prediction method based on attention combination. The method comprises the steps of 1, collecting fund platform data; 2, preprocessing the fund data; step 3, extracting sample features; step 4, establishing a fund price prediction network model; and step 5, training and predicting a fund prediction model. According to the CNN-LSTM network fundprice prediction method based on attention combination provided by the invention, the prediction precision is high, multi-step prediction of fund prices can be realized, and reliable reference information is provided for investors.

Description

technical field [0001] The invention belongs to the field of fund price prediction, in particular to a CNN-LSTM network fund price prediction method based on combined attention. Background technique [0002] With the development of the economy and the transformation of national concepts, fund investment has gradually become one of the important contents of people's life. It is very important for fund investors to analyze various factors that affect fund prices, grasp the changing rules of fund prices and predict prices, so as to effectively avoid price risks. However, fund price data is characterized by high noise, dynamics, complexity, multi-factor influence, and non-parameters. Obviously, accurate prediction of fund prices is a difficult problem with open challenges. [0003] With the improvement of financial theory and mathematical tools, various fund price prediction methods have emerged. [0004] Traditional fund price forecasting models use average line theory, K...

Claims

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Application Information

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Patent Type & Authority Applications(China)
IPC IPC(8): G06Q30/02G06Q40/06G06N3/04
CPCG06Q30/0206G06Q40/06G06N3/049G06N3/045
Inventor 孙亮陈烨
Owner JINLING INST OF TECH
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