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International Journal of Creative and Open Research in Engineering and Management

A Peer-Reviewed, Open-Access International Journal Supporting Multidisciplinary Research, Digital Publishing Standards, DOI Registration, and Academic Indexing.
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ISSN: 3108-1754 (Online)
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License: CC BY 4.0
Peer Review: Double Blind
Volume 02, Issue 04

Published on: April 2026

HYBRID INFORMATION MIXING MODULE FOR STOCK MOVEMENT PREDICTION

CH. Divya G. Charan Teja M. Vijay Kumar Shaik Yasin

V. Sandya

UG Student, Dept of CSE(DS), CMR Technical Campus Hyderabad, Telangana, India

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Plagiarism Passed Peer Reviewed Open Access

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Abstract

With the continuing active research on deep learning, research on stock price prediction using deep learning has been actively conducted in the financial industry. This paper proposes a method for predicting stock price movement using stock and news data. The stock market is affected by many variables; thus, market volatility should be considered for predicting stock price movement. Because stock markets are efficient, all kinds of information are quickly reflected in stock prices. We create a new fusion mix by combining price and text data features and propose a hybrid information mixing module designed using two map blocks for effective interaction between the two features. We extract the multimodal interaction between the time-series features of the price data and the semantic features of the text data. In this paper, a multilayer perceptron-based model, the hybrid information mixing module, is applied to the stock price movement prediction to conduct a price fluctuation prediction experiment in a stock market with high volatility. In addition, the accuracy, Matthews correlation coefficient (MCC) and F1 score for the stock price movement prediction were used to verify the performance of the hybrid information mixing

How to Cite this Paper

Divya, C., Teja, G. C., Kumar, M. V. & Yasin, S. (2026). Hybrid Information Mixing Module for Stock Movement Prediction. International Journal of Creative and Open Research in Engineering and Management, <i>02</i>(04). https://doi.org/10.55041/ijcope.v2i4.395

Divya, CH., et al.. "Hybrid Information Mixing Module for Stock Movement Prediction." International Journal of Creative and Open Research in Engineering and Management, vol. 02, no. 04, 2026, pp. . doi:https://doi.org/10.55041/ijcope.v2i4.395.

Divya, CH.,G. Teja,M. Kumar, and Shaik Yasin. "Hybrid Information Mixing Module for Stock Movement Prediction." International Journal of Creative and Open Research in Engineering and Management 02, no. 04 (2026). https://doi.org/https://doi.org/10.55041/ijcope.v2i4.395.

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References

[1] Y. Xu and S. B. Cohen, ‘‘Stock movement prediction from tweets and historical prices,’’ in Proc. 56th Annu. Meeting Assoc. Comput. Linguistics, Melbourne, VIC, Australia, 2018, pp. 1970–1979.

[2] T. Lin, T. Guo, and K. Aberer, ‘‘Hybrid neural networks for learning the trend in time series,’’ in Proc. 26th Int. Joint Conf. Artif. Intell., Melbourne, VIC, Australia, Aug. 2017, pp. 2273–2279.

[3] E. Jang, H. R. Choi, and H. C. Lee, ‘‘Stock prediction using combination of BERT sentiment analysis and macro economy index,’’ J. Korea Soc. Comput. Inf., vol. 25, no. 5, pp. 47–56, 2020.

[4] X. Li, Y. Li, H. Yang, L. Yang, and X.-Y. Liu, ‘‘DP-LSTM: Differential privacy-inspired LSTM for stock prediction using financial news,’’ 2019, arXiv:1912.10806.

[5] P. Sonkiya, V. Bajpai, and A. Bansal, ‘‘Stock price prediction using BERT and GAN,’’ 2021, arXiv:2107.09055.

[6] R. Sawhney, S. Agarwal, A. Wadhwa, and R. R. Shah, ‘‘Deep attentive learning for stock movement prediction from social media text and company correlations,’’ in Proc. Conf. Empirical Methods Natural Lang. Process. (EMNLP), 2020, pp. 8415–8426. [Online]. Available: https://aclanthology.org/2020.emnlp-main.676

[7] Y. Zhao, H. Du, Y. Liu, S. Wei, X. Chen, F. Zhuang, Q. Li, J. Liu, and G. Kou, ‘‘Stock movement prediction based on bi-typed hybridrelational market knowledge graph via dual attention networks,’’ 2022, arXiv:2201.04965.

[8] I. Tolstikhin, N. Houlsby, A. Kolesnikov, L. Beyer, X. Zhai, T. Unterthiner, J. Yung, D. Keysers, J. Uszkoreit, M. Lucic, and A. Dosovitskiy, ‘‘MLPmixer: An all-MLP architecture for vision,’’ in Proc. Adv. Neural Inf. Process. Sys., vol. 34, 2021, pp. 24261–24272. [Online]. Available: https://proceedings.neurips.cc/paper/2021/hash/cba0a4ee5ccd02fda0fe3f 9a3e7b89fe-Abstract.html

[9] H. Liu, Z. Dai, D. So, and Q. V. Le, ‘‘Pay attention to MLPs,’’ in Proc. Int. Conf. Neural Inf. Process. Syst., vol. 34, 2021, pp. 9204–9215. [Online]. Available: https://openreview.net/pdf?id=KBnXrODoBW 28788 VOLUME 11, 2023

[10] M. Li, X. Zhao, C. Lyu, M. Zhao, R. Wu, and R. Guo, ‘‘MLP4Rec: A pure MLP architecture for sequential recommendations,’’ in Proc. 31st Int. Joint Conf. Artif. Intell., Vienna, Austria, Jul. 2022, pp. 2138–2144.

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  • Published on: Apr 16 2026
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