Application of Multimodal Deep Learning in Sentiment Analysis for Recommendation Systems

Authors

  • Alexander Network Security, Compton University, UK
  • Tatyana Software Engineering, University of Montpellier, France
  • Nikolai Information Technology, Autonomous University of Madrid, Spain

Keywords:

Multimodal deep learning, Recommendation systems, Sentiment analysis, Data fusion

Abstract

This paper proposes a sentiment analysis method for recommendation systems based on multimodal deep learning. In modern internet applications, the accuracy of recommendation systems and user satisfaction are crucial. Therefore, this study designs and implements an innovative multimodal deep learning model that integrates text, image, and user behavioral data for sentiment analysis tasks. Extensive experimental validation using multiple public datasets demonstrates that the proposed method not only significantly outperforms traditional approaches in accuracy but also makes substantial advancements in enhancing user satisfaction and recommendation effectiveness.

References

Zhan, X., Shi, C., Li, L., Xu, K., & Zheng, H. (2024). Aspect category sentiment analysis based on multiple attention mechanisms and pre-trained models. Applied and Computational Engineering, 71, 21-26.

Wu, B., Xu, J., Zhang, Y., Liu, B., Gong, Y., & Huang, J. (2024). Integration of computer networks and artificial neural networks for an AI-based network operator. arXiv preprint arXiv:2407.01541.

Liang, P., Song, B., Zhan, X., Chen, Z., & Yuan, J. (2024). Automating the training and deployment of models in MLOps by integrating systems with machine learning. Applied and Computational Engineering, 67, 1-7.

Li, A., Yang, T., Zhan, X., Shi, Y., & Li, H. (2024). Utilizing Data Science and AI for Customer Churn Prediction in Marketing. Journal of Theory and Practice of Engineering Science, 4(05), 72-79.

Wu, B., Gong, Y., Zheng, H., Zhang, Y., Huang, J., & Xu, J. (2024). Enterprise cloud resource optimization and management based on cloud operations. Applied and Computational Engineering, 67, 8-14.

Xu, J., Wu, B., Huang, J., Gong, Y., Zhang, Y., & Liu, B. (2024). Practical applications of advanced cloud services and generative AI systems in medical image analysis. Applied and Computational Engineering, 64, 82-87.

Zhang, Y., Liu, B., Gong, Y., Huang, J., Xu, J., & Wan, W. (2024). Application of machine learning optimization in cloud computing resource scheduling and management. Applied and Computational Engineering, 64, 9-14.

Huang, J., Zhang, Y., Xu, J., Wu, B., Liu, B., & Gong, Y. Implementation of Seamless Assistance with Google Assistant Leveraging Cloud Computing.

Yang, T., Xin, Q., Zhan, X., Zhuang, S., & Li, H. (2024). ENHANCING FINANCIAL SERVICES THROUGH BIG DATA AND AI-DRIVEN CUSTOMER INSIGHTS AND RISK ANALYSIS. Journal of Knowledge Learning and Science Technology ISSN: 2959-6386 (online), 3(3), 53-62.

Zhan, X., Ling, Z., Xu, Z., Guo, L., & Zhuang, S. (2024). Driving Efficiency and Risk Management in Finance through AI and RPA. Unique Endeavor in Business & Social Sciences, 3(1), 189-197.

Lin, Y.; Li, H.; Li, A.; Shi, Y.; Zhuang, S. Application of AI-driven cloud services in intelligent agriculture pest and disease prediction. Appl. Comput. Eng. 2024, 67, 61–67, https://doi.org/10.54254/2755-2721/67/2024ma0063.

Shi, Y., Li, L., Li, H., Li, A., & Lin, Y. (2024). Aspect-Level Sentiment Analysis of Customer Reviews Based on Neural Multi-task Learning. Journal of Theory and Practice of Engineering Science, 4(04), 1-8.

Yuan, J., Lin, Y., Shi, Y., Yang, T., & Li, A. (2024). Applications of Artificial Intelligence Generative Adversarial Techniques in the Financial Sector. Academic Journal of Sociology and Management, 2(3), 59-66.

Li, Huixiang, et al. "AI Face Recognition and Processing Technology Based on GPU Computing." Journal of Theory and Practice of Engineering Science 4.05 (2024): 9-16.

Shi, Y., Yuan, J., Yang, P., Wang, Y., & Chen, Z. Implementing Intelligent Predictive Models for Patient Disease Risk in Cloud Data Warehousing.

Yuan, B., & Song, T. (2023, November). Structural Resilience and Connectivity of the IPv6 Internet: An AS-level Topology Examination. In Proceedings of the 4th International Conference on Artificial Intelligence and Computer Engineering (pp. 853-856).

Yuan, B., Song, T., & Yao, J. (2024, January). Identification of important nodes in the information propagation network based on the artificial intelligence method. In 2024 4th International Conference on Consumer Electronics and Computer Engineering (ICCECE) (pp. 11-14). IEEE.

Zhan, T., Shi, C., Shi, Y., Li, H., & Lin, Y. (2024). Optimization Techniques for Sentiment Analysis Based on LLM (GPT-3). arXiv preprint arXiv:2405.09770.

Lin, Y., Li, A., Li, H., Shi, Y., & Zhan, X. (2024). GPU-Optimized Image Processing and Generation Based on Deep Learning and Computer Vision. Journal of Artificial Intelligence General science (JAIGS) ISSN: 3006-4023, 5(1), 39-49.

Yuan, B. (2024). Design of an Intelligent Dialogue System Based on Natural Language Processing. Journal of Theory and Practice of Engineering Science, 4(01), 72-78.

Yao, J., & Yuan, B. (2024). Research on the Application and Optimization Strategies of Deep Learning in Large Language Models. Journal of Theory and Practice of Engineering Science, 4(05), 88-94.

Chen, Zhou, et al. "Application of Cloud-Driven Intelligent Medical Imaging Analysis in Disease Detection." Journal of Theory and Practice of Engineering Science 4.05 (2024): 64-71.

Wang, B., Lei, H., Shui, Z., Chen, Z., & Yang, P. (2024). Current State of Autonomous Driving Applications Based on Distributed Perception and Decision-Making.

Ding, W., Zhou, H., Tan, H., Li, Z., & Fan, C. (2024). Automated Compatibility Testing Method for Distributed Software Systems in Cloud Computing.

Qian, K., Fan, C., Li, Z., Zhou, H., & Ding, W. (2024). Implementation of Artificial Intelligence in Investment Decision-making in the Chinese A-share Market. Journal of Economic Theory and Business Management, 1(2), 36-42.

Yao, J., & Yuan, B. (2024). Optimization Strategies for Deep Learning Models in Natural Language Processing. Journal of Theory and Practice of Engineering Science, 4(05), 80-87.

Xu, X., Yuan, B., Song, T., & Li, S. (2023, November). Curriculum recommendations using transformer base model with infonce loss and language switching method. In 2023 5th International Conference on Artificial Intelligence and Computer Applications (ICAICA) (pp. 389-393). IEEE.

Jiang, W., Qian, K., Fan, C., Ding, W., & Li, Z. (2024). Applications of generative AI-based financial robot advisors as investment consultants. Applied and Computational Engineering, 67, 28-33.

Fan, C., Li, Z., Ding, W., Zhou, H., & Qian, K. Integrating Artificial Intelligence with SLAM Technology for Robotic Navigation and Localization in Unknown Environments.

Xu, J., Jiang, Y., Yuan, B., Li, S., & Song, T. (2023, November). Automated Scoring of Clinical Patient Notes using Advanced NLP and Pseudo Labeling. In 2023 5th International Conference on Artificial Intelligence and Computer Applications (ICAICA) (pp. 384-388). IEEE.

Guo, L., Li, Z., Qian, K., Ding, W., & Chen, Z. (2024). Bank Credit Risk Early Warning Model Based on Machine Learning Decision Trees. Journal of Economic Theory and Business Management, 1(3), 24-30.

Li, Zihan, et al. "Robot Navigation and Map Construction Based on SLAM Technology." (2024).

Fan, C., Ding, W., Qian, K., Tan, H., & Li, Z. (2024). Cueing Flight Object Trajectory and Safety Prediction Based on SLAM Technology. Journal of Theory and Practice of Engineering Science, 4(05), 1-8.

Ding, W., Tan, H., Zhou, H., Li, Z., & Fan, C. Immediate Traffic Flow Monitoring and Management Based on Multimodal Data in Cloud Computing. Wangxiangxiang

Tian, J., Li, H., Qi, Y., Wang, X., & Feng, Y. (2024). Intelligent Medical Detection and Diagnosis Assisted by Deep Learning. Applied and Computational Engineering, 64, 121-126.

Downloads

Published

2024-06-30

How to Cite

Alexander, Tatyana, & Nikolai. (2024). Application of Multimodal Deep Learning in Sentiment Analysis for Recommendation Systems. Journal of Artificial Intelligence and Information, 1, 24–31. Retrieved from https://woodyinternational.com/index.php/jaii/article/view/33