Research on Financial Multi-Asset Portfolio Risk Prediction Model Based on Convolutional Neural Networks and Image Processing
DOI:
https://doi.org/10.5281/zenodo.14214385Keywords:
multi-asset portfolio, risk management, convolutional neural network, image processing, financial data visualization, risk predictionAbstract
In today's complex and volatile financial market environment, risk management of multi-asset portfolios faces significant challenges. Traditional risk assessment methods, due to their limited ability to capture complex correlations between assets, find it difficult to effectively cope with dynamic market changes. This paper proposes a multi-asset portfolio risk prediction model based on Convolutional Neural Networks (CNN). By utilizing image processing techniques, financial time series data are converted into two-dimensional images to extract high-order features and enhance the accuracy of risk prediction. Through empirical analysis of data from multiple asset classes such as stocks, bonds, commodities, and foreign exchange, the results show that the proposed CNN model significantly outperforms traditional models in terms of prediction accuracy and robustness, especially under extreme market conditions. This research provides a new method for financial risk management, with important theoretical significance and practical value.
Downloads
References
Zhao Zhijun, Liu Meixin, & Zhang Xiaoqi. (2023). Investment portfolio selection and heterogeneous asset pricing research of multiple risk assets. Economic Dynamics, (04), 59-78.
Wu Haifeng. (2022). Multi-focus Image Fusion Based on Deep Transform Convolutional Neural Network. Advisor: Xiao Bin; Bi Xiuli. Chongqing University of Posts and Telecommunications.
Wang Yaxin. (2023). Research on image super-resolution algorithm based on image prior and convolutional neural network. Advisor: Zhang Xuande. Shaanxi University of Science and Technology.
Hu Qiannan. (2022). Image blind deblurring algorithm based on multi-scale convolutional neural network. Advisor: Chen Qingjiang. Xi'an University of Architecture and Technology.
Zeng Mingjie. (2021). Ceramic image recognition and its application based on convolutional neural network. Advisor: Zhang Yilai. Jingdezhen Ceramic University.
Zhu Meng. (2022). Remote sensing image fusion based on multi-modal convolutional neural network. Advisor: Xu Jindong. Yantai University.
Tang Yongfeng. (2022). Research on image denoising method based on multi-scale convolutional neural network. Wireless Internet Technology, 19(24), 154-156.
Liu Xuewei, Wang Lei, Zhang Qiang, Wang Jishuai, & Li Xuanpu. (2021). Multi-spectral palmprint recognition technology based on convolutional neural network. Journal of Zhengzhou University (Science Edition), 53(03), 50-55.
Wu Yanfang. (2023). Research on lightweight image classification technology based on convolutional neural network. Advisor: Li Guoqiang. Yanshan University.
Wang Xiao. (2021). Research on fusion algorithm of hyperspectral and multispectral images based on convolutional neural network. Advisor: Fang Shuai. Hefei University of Technology.
Ouyang Wanqi. (2023). Research on multi-modal image fusion algorithm based on convolutional neural network. Advisor: Zhu Pan. Wuhan University of Science and Technology.
Liu Yang, Zhang Zhao, Xia Xu, & Han Xuekun. (2023). Application of image recognition technology based on convolutional neural network in breeding work. Modern Agricultural Equipment, 44(03), 57-60.
Wang Qingqiu, Li Linsheng, Gui Jiuqi, & Mao Xiao. (2023). Defect detection and classification of lithium battery electrode sheets based on image processing and convolutional neural network. Manufacturing Automation, 45(10), 50-54.
Liu Xingao, Zhou Rigui, & Guo Wenyu. (2022). Quantum linear convolution and its application in image processing. Acta Automatica Sinica, 48(06), 1504-1519.
Wu Lidong, Xia Jinan, Zhu Yuanhong, Chen Chen, Qiao Kecheng, Cao Fushen, & Pan Junjie. (2023). Application progress of image processing technology based on convolutional neural network in blueberry planting. Shanghai Agricultural Science and Technology, (05), 31-34+90.
Yu Wei. (2022). Implementation of license plate image recognition technology based on convolutional neural network. Information Recording Materials, 23(05), 154-156.
Li, K., Chen, J., Yu, D., Dajun, T., Qiu, X., Jieting, L., ... & Ni, F. (2024). Deep reinforcement learning-based obstacle avoidance for robot movement in warehouse environments. arXiv preprint arXiv:2409.14972.
Li, K., Wang, J., Wu, X., Peng, X., Chang, R., Deng, X., ... & Hong, B. (2024). Optimizing automated picking systems in warehouse robots using machine learning. arXiv preprint arXiv:2408.16633.
Qiao, Y., Li, K., Lin, J., Wei, R., Jiang, C., Luo, Y., & Yang, H. (2024, June). Robust domain generalization for multi-modal object recognition. in 5th International Conference on Artificial Intelligence and Electromechanical Automation (AIEA), pp. 392-397. IEEE.
Li, Keqin, et al. (2024). Utilizing deep learning to optimize software development processes. Journal of Computer Technology and Applied Mathematics 1(1), 70-76.
Li, K., Xirui, P., Song, J., Hong, B., & Wang, J. (2024). The application of augmented reality (ar) in remote work and education. arXiv preprint arXiv:2404.10579.
Sang, N., Cai, W., Yu, C., Sui, M., & Gong, H. (2024). Enhanced investment prediction via advanced deep learning ensemble. https://doi.org/10.20944/preprints202409.2029.v1.
Wang, L., Cheng, Y., Gong, H., Hu, J., Tang, X., & Li, I. (2024). Research on dynamic data flow anomaly detection based on machine learning. arXiv preprint arXiv:2409.14796.
Wu, Z., Gong, H., Chen, J., Yuru, Z., Tan, L., & Shi, G. (2024). A lightweight GAN-based image fusion algorithm for visible and infrared images. arXiv preprint arXiv:2409.15332.
Sun, Y., Duan, Y., Gong, H., & Wang, M. (2019). Learning low-dimensional state embeddings and metastable clusters from time series data. Advances in Neural Information Processing Systems, 32.
Gong, H., & Wang, M. (2020, July). A duality approach for regret minimization in average-award ergodic markov decision processes. in Learning for Dynamics and Control, pp. 862-883. PMLR.
Zhou, T., Zhao, J., Luo, Y., Xie, X., Wen, W., Ding, C., & Xu, X. (2024). Adapi: Facilitating dnn model adaptivity for efficient private inference in edge computing. arXiv preprint arXiv:2407.05633.
Jin, C., Che, T., Peng, H., Li, Y., Metaxas, D. N., & Pavone, M. (2024). Learning from teaching regularization: Generalizable correlations should be easy to imitate. arXiv preprint arXiv:2402.02769.
Peng, H., Xie, X., Shivdikar, K., Hasan, M. A., Zhao, J., Huang, S., ... & Ding, C. (2024, April). Maxkgnn: Extremely fast gpu kernel design for accelerating graph neural networks training. in Proceedings of the 29th ACM International Conference on Architectural Support for Programming Languages and Operating Systems, 2, pp. 683-698.
Qian, Chenghao, et al. (2024). WeatherDG: LLM-assisted Procedural Weather Generation for Domain-Generalized Semantic Segmentation. arXiv preprint arXiv:2410.12075.
Li, Zhenglin, et al. (2023). Stock market analysis and prediction using LSTM: A case study on technology stocks. Innovations in Applied Engineering and Technology, 1-6.
Mo, Yuhong, et al. (2024). Large Language Model (LLM) AI text generation detection based on transformer deep learning algorithm. International Journal of Engineering and Management Research, 14(2), 154-159.
Qian, Chenghao, et al. (2024). WeatherDG: LLM-assisted Procedural Weather Generation for Domain-Generalized Semantic Segmentation. arXiv preprint arXiv:2410.12075.
Downloads
Published
How to Cite
Issue
Section
License
Copyright (c) 2024 Zhuohuan Hu, Fu Lei, Yuxin Fan, Zong Ke, Ge Shi, Zichao Li
This work is licensed under a Creative Commons Attribution 4.0 International License.