Stock price prediction study based on LSTM and random forest model
Keywords:
Climate Change; Financial Markets; Environmental Factors; Emergencies; Stock ForecastAbstract
The growing impact of global climate change on the economy and financial markets highlights the importance of environmental factors in the financial sector. The purpose of this study is to explore the correlation between environmental factors and the overall performance of the stock market, and the short-term impact of extreme weather events on the stock prices of specific industries (e. g., energy industries), and to build a commodity price prediction model to provide investors with more comprehensive and accurate financial market analysis and decision support. Through multi-source data collection and analysis, we found the correlation between environmental factors and the overall stock performance index, and revealed the impact of extreme weather events on energy stock prices. Meanwhile, the LSTM and random forest regression model were used to predict commodity prices, revealing the importance of environmental factors in financial markets, and providing a useful reference for the study of the correlation between environmental factors and financial markets.
References
[1] Park, H. J., Kim, Y., & Kim, H. Y. (2022). Stock market forecasting using a multi-task approach integrating long short-term memory and the random forest framework. Applied Soft Computing, 114, 108106.
[2] Park, H. J., Kim, Y., & Kim, H. Y. (2022). Stock market forecasting using a multi-task approach integrating long short-term memory and the random forest framework. Applied Soft Computing, 114, 108106.
[3] Ghosh, P., Neufeld, A., & Sahoo, J. K. (2022). Forecasting directional movements of stock prices for intraday trading using LSTM and random forests. Finance Research Letters, 46, 102280.
[4] Ray, S., Lama, A., Mishra, P., Biswas, T., Das, S. S., & Gurung, B. (2023). An ARIMA-LSTM model for predicting volatile agricultural price series with random forest technique. Applied Soft Computing, 149, 110939.
[5] Chen, J. (2023). Analysis of bitcoin price prediction using machine learning. Journal of Risk and Financial Management, 16(1), 51.
[6] Omar, A. B., Huang, S., Salameh, A. A., Khurram, H., & Fareed, M. (2022). Stock market forecasting using the random forest and deep neural network models before and during the COVID-19 period. Frontiers in Environmental Science, 10, 917047.
[7] Darapaneni, N., Paduri, A. R., Sharma, H., Manjrekar, M., Hindlekar, N., Bhagat, P., ... & Agarwal, Y. (2022). Stock price prediction using sentiment analysis and deep learning for Indian markets. arXiv preprint arXiv:2204.05783.
[8] Zhang, J., Ye, L., & Lai, Y. (2023). Stock price prediction using CNN-BiLSTM-Attention model. Mathematics, 11(9), 1985.
[9] Eghtesad, A., & Mohammadi, E. (2023). Portfolio optimization with return prediction using LSTM, Random forest, and ARIMA. Journal of Financial Management Perspective, 13(43), 9-28.
[10] Vuong, P. H., Dat, T. T., Mai, T. K., & Uyen, P. H. (2022). Stock-price forecasting based on XGBoost and LSTM. Computer Systems Science & Engineering, 40(1).
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APA:
He, Y., Yang, B., Yao, Y., Lu, Z., & Yu, L. (2024). Stock price prediction study based on LSTM and random forest model. International Scientific Technical and Economic Research, 2(3), 57–62. http://www.istaer.online/index.php/Home/article/view/No.2465
GB/T 7714-2015:
He Yunkai, Yang Bo, Yao Yifan, Lu Zikai, Yu Liqun. Stock price prediction study based on LSTM and random forest model[J]. International Scientific Technical and Economic Research, 2024, 2(3): 57–62. http://www.istaer.online/index.php/Home/article/view/No.2465
MLA:
He, Yunkai, et al. "Stock price prediction study based on LSTM and random forest model." International Scientific Technical and Economic Research, 2.3 (2024): 57-62. http://www.istaer.online/index.php/Home/article/view/No.2465
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This work is licensed under the Creative Commons Attribution International License (CC BY 4.0).