MOBILE U-NET V3 AND BILSTM: PREDICTING STOCK MARKET PRICES BASED ON DEEP LEARNING APPROACHES

IF 0.9 Q4 COMPUTER SCIENCE, INFORMATION SYSTEMS Jordanian Journal of Computers and Information Technology Pub Date : 2023-01-01 DOI:10.5455/jjcit.71-1682317264
D. Reddy, B. R.
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Abstract

The development of reliable stock market models has enabled investors to make better-informed decisions. Investors may be able to locate companies that offer the highest dividend yields and lower their investment risks by using a trading strategy. The degree to which stock prices are significantly correlated, however, makes stock market analysis more complicated when using batch processing methods. The stock market prediction has entered a time of advanced technology with the rise of technological wonders like global digitalization. The significance of artificial intelligence models has greatly increased as a result of the significantly enhance in market capitalization. Because it builds a strong time-series framework based on Deep Learning (DL) for predicting future stock prices, the proposed study is novel. Deep learning has recently enjoyed considerable success in some domains due to its exceptional capacity for handling data. For instance, it is commonly used in financial disciplines such as trade execution strategies, portfolio optimization, and stock market forecasting. In this research, we propose a structure based on Mobile U-Net V3 and a hybrid of a (Mobile U-Net V3-BiLSTM) with BiLSTM to forecast the closing prices of Apple, Inc. and S&P 500 stock data. The Root Mean Squared Error (RMSE), Mean Squared Error (MSE), Pearson's Correlation (R), and Normalization Root Mean Squared Error (NRMSE) metrics were utilized to calculate the outcomes of the DL stock prediction methods. The Mobile U-Net V3-BiLSTM model outperformed other techniques for forecasting stock market prices.
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移动u-net v3和bilstm:基于深度学习方法的股票市场价格预测
可靠的股票市场模型的发展使投资者能够做出更明智的决策。投资者可以通过使用交易策略找到提供最高股息收益率和降低投资风险的公司。然而,股票价格显著相关的程度使股票市场分析在使用批处理方法时变得更加复杂。随着全球数字化等技术奇迹的兴起,股市预测已经进入了一个先进的技术时代。由于市值的显著提升,人工智能模型的重要性大大增加。因为它建立了一个基于深度学习(DL)的强大时间序列框架来预测未来的股票价格,所以提出的研究是新颖的。由于其处理数据的特殊能力,深度学习最近在一些领域取得了相当大的成功。例如,它通常用于金融学科,如交易执行策略、投资组合优化和股票市场预测。在本研究中,我们提出了一个基于移动U-Net V3和移动U-Net V3-BiLSTM与BiLSTM的混合结构来预测苹果公司收盘价和标准普尔500指数股票数据。使用均方根误差(RMSE)、均方误差(MSE)、Pearson相关(R)和归一化均方根误差(NRMSE)指标来计算DL股票预测方法的结果。Mobile U-Net V3-BiLSTM模型在预测股票市场价格方面优于其他技术。
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来源期刊
Jordanian Journal of Computers and Information Technology
Jordanian Journal of Computers and Information Technology Computer Science-Computer Science (all)
CiteScore
3.10
自引率
25.00%
发文量
19
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