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Composite Triple Activation Function: Enhancing CNN-BiLSTM-AM for Sustainable Financial Risk Prediction in Manufacturing

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  • Yingying Song

    (Department of Mathematics, Mahasarakham University, Maha Sarakham 44150, Thailand
    School of Computer Science and Engineering, Guangzhou Institute of Science and Technology, Guangzhou 510540, China)

  • Monchaya Chiangpradit

    (Department of Mathematics, Mahasarakham University, Maha Sarakham 44150, Thailand)

  • Piyapatr Busababodhin

    (Department of Mathematics, Mahasarakham University, Maha Sarakham 44150, Thailand
    Data Science for Sustainable Agriculture (DSSA) Research Unit, Faculty of Science, Mahasarakham University, Maha Sarakham 44150, Thailand)

Abstract

As a key pillar of China’s economy, the manufacturing industry faces sustainable financial risk management challenges as it undergoes digital and green low-carbon transformation. However, existing financial risk prediction models often suffer from limited accuracy, insufficient robustness, and a suboptimal activation function design. In this study, we investigated advanced deep learning architectures to address these limitations, and we introduced a novel composite triple activation function (CTAF) framework to enhance predictive performance and model robustness. We began by evaluating several deep learning models, such as CNNs, BiLSTM, CNN-AM, and BiLSTM-AM, demonstrating that CNN-BiLSTM-AM achieved the highest performance. On the basis of this model structure, we proposed a CTAF, a composite activation mechanism that combines two distinct functions applied to the raw input x, effectively mitigating gradient instability and enhancing nonlinear expressiveness. Through ablation experiments with different composite activation functions, we verified that the CTAF consistently outperformed alternatives. Meanwhile, the mainstream activation functions and CTAF were applied to different layers for comparison, further verifying the CTAF’s advantages in various structures. The optimal configuration was achieved when tanh was used in the CNN and Dense layers and the CTAF (tanh_relu) was applied in a Lambda layer after a BiLSTM layer, resulting in the highest accuracy of 99.5%. Furthermore, paired t -tests and evaluations on cross-industry datasets confirmed the optimal model’s stability and generalizability.

Suggested Citation

  • Yingying Song & Monchaya Chiangpradit & Piyapatr Busababodhin, 2025. "Composite Triple Activation Function: Enhancing CNN-BiLSTM-AM for Sustainable Financial Risk Prediction in Manufacturing," Sustainability, MDPI, vol. 17(7), pages 1-35, March.
  • Handle: RePEc:gam:jsusta:v:17:y:2025:i:7:p:3067-:d:1624344
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    References listed on IDEAS

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    1. Andreea-Cristina PETRICĂ & Stelian STANCU & Alexandru TINDECHE, 2016. "Limitation of ARIMA models in financial and monetary economics," Theoretical and Applied Economics, Asociatia Generala a Economistilor din Romania - AGER, vol. 0(4(609), W), pages 19-42, Winter.
    2. Andreea-Cristina PETRICĂ & Stelian STANCU & Alexandru TINDECHE, 2016. "Limitation of ARIMA models in financial and monetary economics," Theoretical and Applied Economics, Asociatia Generala a Economistilor din Romania / Editura Economica, vol. 0(4(609), W), pages 19-42, Winter.
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