Machine Learning Algorithms for High Performance Modelling in Health Monitoring System Based on 5G Networks

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Juan Luis Meza Carhuancho
Jacinto Joaquin Vertiz-Osores
Maria Alina Cueva-Rios
Doris Fuster-Guillen
Yolvi Ocaña-Fernández
Zoila Mercedes Collantes Inga

Abstract

The development of Internet of Things (IoT) applications for creating behavioural and physiological monitoring methods, such as an IoT-based student healthcare monitoring system, has been accelerated by advances in sensor technology. Today, there are an increasing number of students living alone who are dispersed across large geographic areas, therefore it is important to monitor their health and function. This research propose novel technique in high performance modelling for health monitoring system by 5G network based machine learning analysis. Here the input is collected as EEG brain waves which are monitored and collected through 5G networks. This input EEG waves has been processed and obtained as fragments and noise removal is carried out. The processed EEG wave fragments has been extracted using K-adaptive reinforcement learning. this extracted features has been classified using naïve bayes gradient feed forward neural network. The performance analysis shows comparative analysis between proposed and existing technique in terms of accuracy, precision, recall, F-1 score, RMSE and MAP. Proposed technique attained accuracy of 95%, precision of 85%, recall of 79%, F-1 measure of 68%, RMSE of 52% and MAP of 66%.

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How to Cite
Carhuancho, J. L. M. ., Vertiz-Osores, J. J., Cueva-Rios, M. A. ., Fuster-Guillen, D., Ocaña-Fernández, Y. ., & Inga, Z. M. C. (2023). Machine Learning Algorithms for High Performance Modelling in Health Monitoring System Based on 5G Networks. International Journal of Communication Networks and Information Security (IJCNIS), 14(3), 330–341. Retrieved from https://www.ijcnis.org/index.php/ijcnis/article/view/5632 (Original work published December 31, 2022)
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Research Articles