计算机科学
预处理器
股票价格
人工智能
数据预处理
时间序列
数据建模
股票市场
人工神经网络
传感器融合
数据挖掘
机器学习
计量经济学
系列(地层学)
数学
古生物学
马
数据库
生物
标识
DOI:10.1109/icet58434.2023.10211379
摘要
Accurately predicting stock prices can help investors make wise decisions, avoid blind herd trading behaviors such as chasing price increases and killing drops, and significantly impact the healthy development and the safe operation of the stock market. Stock time series data is highly complex and has huge data. This paper proposes a CNN-GRU-attention model for predicting stock prices, which uses three different data decomposition methods, including EMD, EEMD, and CEEMDAN for data preprocessing and selects the optimal data preprocessing method for the model. Furthermore, the integrated model is compared against CNN-LSTM-attention, GRU, RNN, and other conventional single models. Through the analysis of evaluation indicators such as MAE, RMSE, and R, it was found that the CNN-GRU-attention model had the best prediction accuracy. The experimental results of the dataset show that the CNN-GRU-attention model is feasible and universal in its prediction effect, with predicted values closest to the actual values and are better enough to meet the application’s needs.
科研通智能强力驱动
Strongly Powered by AbleSci AI