A Deep Learning-Based LSTM for Stock Price Prediction Using Twitter Sentiment Analysis

被引:0
|
作者
Ouf, Shimaa [1 ]
Hawary, Mona El [1 ]
Aboutabl, Amal [2 ]
Adel, Sherif [3 ]
机构
[1] Information Systems Department-Faculty of Commerce and Business Administration, Helwan University, Cairo, Egypt
[2] Computer Science Department-Faculty of Computers and Artificial Intelligence, Helwan University, Cairo, Egypt
[3] Administration Department-Faculty of Commerce and Business, Helwan University, Cairo, Egypt
关键词
Correlation - Historical data - Language processing - LSTM - Machine learning models - Natural language processing - Natural languages - Sentiment analysis - Stock price prediction - Xgboost;
D O I
10.14569/IJACSA.2024.0151223
中图分类号
学科分类号
摘要
Numerous economic, political, and social factors make stock price predictions challenging and unpredictable. This paper focuses on developing an artificial intelligence (AI) model for stock price prediction. The model utilizes LSTM and XGBoost techniques in three sectors: Apple, Google, and Tesla. It aims to detect the impact of combining sentiment analysis with historical data to see how much people's opinions can change the stock market. The proposed model computes sentiment scores using natural language processing (NLP) techniques and combines them with historical data based on Date. The RMSE, R², and MAE metrics are used to evaluate the performance of the proposed model. The integration of sentiment data has demonstrated a significant improvement and achieved a higher accuracy rate compared to historical data alone. This enhances the accuracy of the model and provides investors and the financial sector with valuable information and insights. XGBoost and LSTM demonstrated their effectiveness in stock price prediction; XGBoost outperformed the LSTM technique. © (2024), (Science and Information Organization). All Rights Reserved.
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页码:207 / 218
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