Construction And Performance Evaluation of Big Data Prediction Model Based on Fuzzy Clustering Algorithm in Cloud Computing Environment

Main Article Content

Yanhua Hu, Chunyu Zhang, Yanan Cui, Ling Wei, Zhiping Ni

Abstract

In the evolving landscape of biomedical biometrics, where multimodal approaches are increasingly crucial for reliable user authentication, this research presents a comprehensive study. The primary focus is on the construction and performance evaluation of a robust big data prediction model within a cloud computing environment. The advent of big data and cloud computing has revolutionized the field of biomedical biometrics, offering immense potential for advanced data analysis and prediction. This research presents the development and evaluation of a robust prediction model for multimodal biometric data in biomedical applications. The proposed model incorporation of Reliable Discrete Variable Topology (RDVT) into the prediction model. RDVT introduces a topological data structure that enhances data reliability and ensures the integrity of multimodal biometric information. The construction and training of the prediction model are meticulously detailed, encompassing data preprocessing, feature extraction, clustering, classification, and model evaluation. Additionally, the integration of a fuzzy clustering algorithm enhances the model's ability to handle uncertainty and imprecision in biometric data. The advancement of multimodal biometrics in the biomedical field by introducing the Reliable Discrete Variable Topology (RDVT) and a big data prediction model based on a fuzzy clustering algorithm in a cloud computing environment. The model's performance is rigorously assessed through extensive experimentation, including accuracy, precision, recall, and F1-score measurements.

Article Details

Section
Articles
Author Biography

Yanhua Hu, Chunyu Zhang, Yanan Cui, Ling Wei, Zhiping Ni

1 Yanhua Hu

2 Chunyu Zhang

1 Yanan Cui

1 Ling Wei

1 Zhiping Ni

1 College of Information Science and Engineering, Liuzhou Institute of Technology, Liuzhou, Guangxi, 545616, China

2 College of Information Engineering, Xizang Minzu University, Xianyang, Shaanxi,712082, China

*Corresponding author e-mail: hyh7525@163.com

Copyright © JES 2023 on-line : journal.esrgroups.org

References

Medjahed, C., Rahmoun, A., Charrier, C., & Mezzoudj, F. (2022). A deep learning-based multimodal biometric system using score fusion. IAES Int. J. Artif. Intell, 11(1), 65.

Muhammad, G., Alshehri, F., Karray, F., El Saddik, A., Alsulaiman, M., & Falk, T. H. (2021). A comprehensive survey on multimodal medical signals fusion for smart healthcare systems. Information Fusion, 76, 355-375.

Wagan, S. A., Koo, J., Siddiqui, I. F., Qureshi, N. M. F., Attique, M., & Shin, D. R. (2023). A fuzzy-based duo-secure multi-modal framework for IoMT anomaly detection. Journal of King Saud University-Computer and Information Sciences, 35(1), 131-144.

Sreedevi, A. G., Harshitha, T. N., Sugumaran, V., & Shankar, P. (2022). Application of cognitive computing in healthcare, cybersecurity, big data and IoT: A literature review. Information Processing & Management, 59(2), 102888.

Tenali, N., & Babu, G. R. M. (2023). A systematic literature review and future perspectives for handling big data analytics in COVID-19 diagnosis. New Generation Computing, 41(2), 243-280.

Ehiabhi, J., & Wang, H. (2023). A Systematic Review of Machine Learning Models in Mental Health Analysis Based on Multi-Channel Multi-Modal Biometric Signals. BioMedInformatics, 3(1), 193-219.

Thakre, B., Thakre, R., Timande, S., & Sarangpure, V. (2021). An Efficient Data Mining Based Automated Learning Model to Predict Heart Diseases. Machine Learning Applications in Engineering Education and Management, 1(2), 27–33. Retrieved from http://yashikajournals.com/index.php/mlaeem/article/view/17

Garg, A., & Mago, V. (2021). Role of machine learning in medical research: A survey. Computer science review, 40, 100370.

Avanzo, M., Porzio, M., Lorenzon, L., Milan, L., Sghedoni, R., Russo, G., ... & Mettivier, G. (2021). Artificial intelligence applications in medical imaging: A review of the medical physics research in Italy. Physica Medica, 83, 221-241.

Kashani, M. H., Madanipour, M., Nikravan, M., Asghari, P., & Mahdipour, E. (2021). A systematic review of IoT in healthcare: Applications, techniques, and trends. Journal of Network and Computer Applications, 192, 103164.

Liu, G., Zhao, H., Fan, F., Liu, G., Xu, Q., & Nazir, S. (2022). An enhanced intrusion detection model based on improved kNN in WSNs. Sensors, 22(4), 1407.

Dimf, G. P. ., Kumar , P. ., & Manju, V. N. . (2023). An Efficient Power Theft Detection Using Modified Deep Artificial Neural Network (MDANN). International Journal of Intelligent Systems and Applications in Engineering, 11(1), 01–11. Retrieved from https://ijisae.org/index.php/IJISAE/article/view/2437

Jiang, X., Ma, J., Xiao, G., Shao, Z., & Guo, X. (2021). A review of multimodal image matching: Methods and applications. Information Fusion, 73, 22-71.

Nagarajan, S. M., Deverajan, G. G., Chatterjee, P., Alnumay, W., & Ghosh, U. (2021). Effective task scheduling algorithm with deep learning for Internet of Health Things (IoHT) in sustainable smart cities. Sustainable Cities and Society, 71, 102945.

SaiTeja, C., & Seventline, J. B. (2023). A hybrid learning framework for multi-modal facial prediction and recognition using improvised non-linear SVM classifier. AIP Advances, 13(2).

Awotunde, J. B., Oluwabukonla, S., Chakraborty, C., Bhoi, A. K., & Ajamu, G. J. (2022). Application of artificial intelligence and big data for fighting COVID-19 pandemic. Decision Sciences for COVID-19: Learning Through Case Studies, 3-26.

Wang, Z., Zheng, P., Li, X., & Chen, C. H. (2022). Implications of data-driven product design: From information age towards intelligence age. Advanced Engineering Informatics, 54, 101793.

Yang, Y. C., Islam, S. U., Noor, A., Khan, S., Afsar, W., & Nazir, S. (2021). Influential usage of big data and artificial intelligence in healthcare. Computational and mathematical methods in medicine, 2021.

Rahimi, M., Navimipour, N. J., Hosseinzadeh, M., Moattar, M. H., & Darwesh, A. (2022). Cloud healthcare services: A comprehensive and systematic literature review. Transactions on Emerging Telecommunications Technologies, 33(7), e4473.

Chen, X., Zou, D., Xie, H., & Wang, F. L. (2021). Past, present, and future of smart learning: a topic-based bibliometric analysis. International Journal of Educational Technology in Higher Education, 18, 1-29.

Ren, Z. (2023). Optimization of Innovative Education Resource Allocation in Colleges and Universities Based on Cloud Computing and User Privacy Security. Wireless Personal Communications, 1-15.

Adewole, K. S., Akintola, A. G., Jimoh, R. G., Mabayoje, M. A., Jimoh, M. K., Usman-Hamza, F. E., ... & Ameen, A. O. (2021). Cloud-based IoMT framework for cardiovascular disease prediction and diagnosis in personalized E-health care. In Intelligent IoT Systems in Personalized Health Care (pp. 105-145). Academic Press.

Gaonkar, A., Chukkapalli, Y., Raman, P. J., Srikanth, S., & Gurugopinath, S. (2021, June). A comprehensive survey on multimodal data representation and information fusion algorithms. In 2021 International Conference on Intelligent Technologies (CONIT) (pp. 1-8). IEEE.

Ariza-Colpas, P. P., Vicario, E., Oviedo-Carrascal, A. I., Butt Aziz, S., Piñeres-Melo, M. A., Quintero-Linero, A., & Patara, F. (2022). human activity recognition data analysis: History, evolutions, and new trends. Sensors, 22(9), 3401.

Yin, J. (2023). Crime Prediction Methods Based on Machine Learning: A Survey. Computers, Materials & Continua, 74(2).

Egger, J., Gsaxner, C., Pepe, A., Pomykala, K. L., Jonske, F., Kurz, M., ... & Kleesiek, J. (2022). Medical deep learning—A systematic meta-review. Computer methods and programs in biomedicine, 221, 106874.

Bharadwaj, H. K., Agarwal, A., Chamola, V., Lakkaniga, N. R., Hassija, V., Guizani, M., & Sikdar, B. (2021). A review on the role of machine learning in enabling IoT based healthcare applications. IEEE Access, 9, 38859-38890.

Mijwil, M., Salem, I. E., & Ismaeel, M. M. (2023). The Significance of Machine Learning and Deep Learning Techniques in Cybersecurity: A Comprehensive Review. Iraqi Journal For Computer Science and Mathematics, 4(1), 87-101.

Yu, H., & Zhou, Z. (2021). Optimization of IoT-based artificial intelligence assisted telemedicine health analysis system. IEEE access, 9, 85034-85048.