A Multi-Task GRU-Attention Model for Predicting Enterprise Investment and Financing Behavior from Multi-Source Economic Data

Lei Gu, Tao Liu

Abstract


Accurately predicting corporate investment and financing behavior is crucial for improving financial intelligence and capital allocation efficiency. This article proposes an economic data-driven multi-task deep prediction model that integrates Gated Recurrent Unit (GRU) networks with a multi-head attention mechanism to process multi-source heterogeneous economic variables, including macroeconomic indicators, corporate financial data, and market sentiment factors, under a unified structure. The model constructs multivariate time-series samples through sliding windows and employs a dual-output architecture to perform regression prediction of financing intensity and classification recognition of behavioral states into three classes (expansion, wait-and-see, contraction). To enhance responsiveness to behavioral transition patterns, a feature cross-attention mechanism and a joint loss function optimization strategy are introduced, improving nonlinear behavior learning capability and generalization robustness. Based on empirical data from 232 A-share listed companies, covering 12,840 training samples over the past decade, the experimental results showed that the model achieved a coefficient of determination (R²) of 0.862 in the financing prediction subtask, an accuracy of 88.3% in the classification task, and a Macro-F1 value of 0.841. Compared with baseline machine learning methods including Support Vector Regression (SVR), Random Forest (RF), and Multi-Layer Perceptron (MLP), the model demonstrated superior error control and trend fitting ability. Overall, the model exhibits high prediction accuracy, stability, and industry adaptability, providing a feasible technical path and empirical basis for building a data-driven intelligent investment and financing analysis system for enterprises.


Full Text:

PDF

References


Tiwari S , Das S K .Intelligent Prediction of Critical State Parameters for Non-plastic Tailings and Soils Using Evolutionary Algorithms[J].Mining, Metallurgy & Exploration, 2024, 41(1):18.https://dol:10.1007/s42461-023-00894-z..

Alamu O S , Siam M K .Stock Price Prediction and Traditional Models: An Approach to Achieve Short-, Medium- and Long-Term Goals[J].Journal of Intelligent Learning Systems and Applications, 2024, 16(4):21..https://dol:10.4236/jilsa.2024.164018.

Nikumbh A , Vijaykumar S .Stock Price Prediction an Intelligent Approach[J].BVIMSR Journal of Management Research, 2023, 15(1)..https://dol:10.1002/int.20006.

Chiou-Wei S Z , Lee Y T .Application of KL distance-based intelligent recommendation method to fund recommendation for users with investment behavior in Asia Region[J].Heliyon, 2024, 10(12)..https://dol:10.1016/j.heliyon.2024.e32959.

Akishev K , Tulegulov A , Kalkenov A ,et al.DEVELOPMENT OF AN INTELLIGENT SYSTEM AUTOMATING MANAGERIAL DECISION-MAKING USING BIG DATA[J].Eastern-European Journal of Enterprise Technologies, 2023, 126(3)..https://dol:10.15587/1729-4061.2023.289395.

Ansah K , Denwar I W , Appati J K .Intelligent Models for Stock Price Prediction: A Comprehensive Review[J].J. Inf. Technol. Res. 2022, 15:1-17..https://dol:10.4018/jitr.298616.

Big data analysis technology in regional economic market planning and enterprise market value prediction[J].Journal of Intelligent Systems, 2024, 33(1):1-17..https://dol:10.1016/S0169-555X(01)00027-7.

Shahrour M H , Dekmak M .Intelligent stock prediction: A neural network approach[J].International Journal of Financial Engineering, 2023, 10(01)..https://dol:10.1142/S2424786322500165.

Yao Y .Data Analysis on the Computer Intelligent Stock Prediction Model Based on LSTM RNN and Algorithm Optimization[J].2022 IEEE International Conference on Electrical Engineering, Big Data and Algorithms (EEBDA), 2022:480-485..https://dol:10.1109/EEBDA53927.2022.9744859.

Chandok G A , Rexy V A M , Basha H A ,et al.Enhancing Bankruptcy Prediction with White Shark Optimizer and Deep Learning: A Hybrid Approach for Accurate Financial Risk Assessment[J].International Journal of Intelligent Engineering & Systems, 2024, 17(1)..https://dol:10.22266/ijies2024.0229.14.

Zhang X , Wang J .An enhanced decomposition integration model for deterministic and probabilistic carbon price prediction based on two-stage feature extraction and intelligent weight optimization[J].Journal of cleaner production, 2023, 415(Aug.20):137791.1-137791.15..https://dol:10.1016/j.jclepro.2023.137791.

Tang D , Wei J .Prediction and Characteristic Analysis of Enterprise Digital Transformation Integrating XGBoost and SHAP[J].Journal of Advanced Computational Intelligence & Intelligent Informatics, 2023, 27(5)..https://dol:10.20965/jaciii.2023.p0780.

Pei Z J , Song X Z , Wang H T ,et al.Interpretation and characterization of rate of penetration intelligent prediction model[J].Petroleum Science, 2024, 21(1):582-596..https://dol:10.1287/mksc.12.3.230.

Wu W .An Intelligent Gray Prediction Model Based on Fuzzy Theory[J].International Transactions on Electrical Energy Systems, 2022, 2022(10):9..https://dol:10.1155/2022/8618586.

Yang W .A neural network-based model for cross-border e-commerce supply chain demand forecasting and inventory optimization[J].Applied Mathematics and Nonlinear Sciences, 2024, 9(1)..https://dol:10.2478/amns-2024-2915.

Kartbayev T , Lakhno V ,Malyukov V.Turgynbayeva A.Alimseitova Z.H.Malikova F.Kashaganova G.MODEL FOR THE DECISION SUPPORT SYSTEM DURING THE PROCEDURE OF INVESTMENT PROJECTS ASSESSMENT IN THE FIELD OF ENTERPRISE DIGITALIZATION CONSIDERING MULTIFACTORALITY[J].journal of theoretical and applied information technology, 2022, 100(7):1684-1692..https://dol:10.1134/S1064230724700126.

Zhang X , Wang J .An enhanced decomposition integration model for deterministic and probabilistic carbon price prediction based on two-stage feature extraction and intelligent weight optimization[J].Journal of cleaner production, 2023, 415(20):137791.1-137791.15..https://dol:10.1016/j.jclepro.2023.137791.

Xu J , Li J .Research on enterprise performance evaluation and prediction based on BP neural network[J].Proceedings of SPIE, 2024, 131(81):7..https://dol:10.2174/1874110X01509012168.

Yu C .Design of Drug Sales Forecasting Model Using Particle Swarm Optimization Neural Networks Model[J].Computational intelligence and neuroscience, 2022, 2022:6836524..https://dol:10.1016/j.ijhydene.2008.11.026.

Wang X , Wang Z , Yang J .Research on the Construction Mechanism of Enterprise Forecasting Ability– Case study on improving prediction accuracy based on Lenovo[J].SHS Web of Conferences, 2024,(193):4..https://dol:10.1051/shsconf/202419301005.




DOI: https://doi.org/10.31449/inf.v49i14.10601

Creative Commons License
This work is licensed under a Creative Commons Attribution 3.0 License.