Short-Term Stock Market Trend Prediction Driven by Artificial Intelligence - A Comprehensive Model Based on Large-Scale Multi-Source Data

Main Article Content

Kailu Tian

Abstract

Short-term stock market trend prediction plays an important role in financial analysis and investment decision-making, yet it remains a challenging task due to market volatility and complex influencing factors. From a business data analytics perspective, this study investigates an artificial intelligence-driven framework for short-term stock market trend prediction based on large-scale multi-source financial data. The proposed approach integrates historical market data and constructed analytical features to capture short-term market dynamics and generate directional trend signals. Rather than focusing on point price prediction, the framework adopts a classification-based strategy to support next-day trend assessment. Model performance is evaluated using publicly available financial market data, and the results demonstrate that the proposed framework is capable of providing stable and interpretable prediction outcomes. In addition, the study discusses the practical application of the proposed framework within real-world financial analysis workflows. The results indicate that artificial intelligence techniques, when combined with structured feature construction, can serve as effective auxiliary tools for short-term market analysis. This research contributes to the application-oriented exploration of artificial intelligence methods in financial data analysis and provides practical insights for business-oriented market prediction tasks.

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How to Cite

Short-Term Stock Market Trend Prediction Driven by Artificial Intelligence - A Comprehensive Model Based on Large-Scale Multi-Source Data. (2026). Journal of Sustainability, Policy, and Practice, 2(1), 132-141. https://schoalrx.com/index.php/jspp/article/view/83

References

1. G. Jia, "Research on hydrogen energy stock market prediction based on ensemble models: The role of multi-source data and external factors,". doi: 10.2139/ssrn.5025161.

2. Z. Xu, W. Zhang, Y. Sun, and Z. Lin, "Multi-source data-driven LSTM framework for enhanced stock price prediction and volatility analysis," Journal of Computer Technology and Software, vol. 3, no. 8, 2024. doi: 10.5281/zenodo.14291972.

3. F. Gao, Y. Gao, and Z. Wang, "The impact and prediction of investor sentiment on stock market returns: Evidence from multisource heterogeneous data," Computational Economics, pp. 1-30, 2025. doi: 10.1007/s10614-025-11096-8.

4. Y. Yang, J. E. Guo, S. Sun, and Y. Li, "Forecasting crude oil price with a new hybrid approach and multi-source data," Engineering Applications of Artificial Intelligence, vol. 101, p. 104217, 2021. doi: 10.1016/j.engappai.2021.104217.

5. Y. Zhang, "Comprehensive study on stock investment behavior and risk based on artificial intelligence, big data and multi-agent simulation," In 2025 International Conference on Financial Innovation and Marketing Management (FIMM 2025), November, 2025, pp. 205-212. doi: 10.2991/978-94-6463-874-5_26.

6. J. Jin, T. Zhu, and C. Li, "Graph Neural Network-Based Prediction Framework for Protein-Ligand Binding Affinity: A Case Study on Pediatric Gastrointestinal Disease Targets," Journal of Medicine and Life Sciences, vol. 1, no. 3, pp. 136–142, 2025.

7. K. Konety, "Real-time stock market recommendation & prediction using multi source data," M.Sc. thesis, Technological University Dublin, Ireland, 2022.

8. L. Chai, H. Xu, Z. Luo, and S. Li, "A multi-source heterogeneous data analytic method for future price fluctuation prediction," Neurocomputing, vol. 418, pp. 11-20, 2020. doi: 10.1016/j.neucom.2020.07.073.

9. S. Li, K. Liu, and X. Chen, “A context-aware personalized recommendation framework integrating user clustering and BERT-based sentiment analysis,” Journal of Computer, Signal, and System Research, vol. 2, no. 6, pp. 100–108, 2025.

10. Y. Cao, Z. Chen, P. Kumar, Q. Pei, Y. Yu, H. Li, and P. M. Ndiaye, "RiskLabs: Predicting financial risk using large language model based on multimodal and multi-sources data," arXiv preprint arXiv:2404.07452, 2024. doi: 10.48550/arXiv.2404.07452.

11. B. Bai, L. Tang, W. Yang, and X. Zeng, "A study on intelligent anomaly detection in multi-source data using large-scale language models," Intelligent Decision Technologies, 2025. doi: 10.1177/18724981251397519.

12. Z. Pan, Z. Huang, X. Lin, S. Li, H. Zeng, and D. Li, "Multi-data fusion based marketing prediction of listed enterprise using MS-LSTM model," In Proceedings of the 2020 3rd International Conference on Algorithms, Computing and Artificial Intelligence, December, 2020, pp. 1-10. doi: 10.1145/3446132.3446169.

13. A. Li, Q. Wei, Y. Shi, and Z. Liu, "Research on stock price prediction from a data fusion perspective," Data Science in Finance and Economics, vol. 3, no. 3, pp. 230-250, 2023. doi: 10.3934/dsfe.2023014.