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A CANONICAL CORRELATED MULTI-AGENT REINFORCEMENT FOR E-HEALTHCARE MONITORING

📘 Volume 9 📄 Issue 9 📅 september 2023

👤 Authors

V. Deepa, Dr .Rajeswari 1
1. PG and Research Department of Computer Science, computer science, Tirppur Kumaran College for Women, Tirppur, Tamil Nadu, India

📄 Abstract

Internet of Things (IoT) is becoming more popular, sensors are used to identify the patients condition. Heart failure is a significant problem worldwide. It is a complicated task to forecast heart illness for a medical practitioner since it requires more contribution and understanding. Heart frequency monitoring is the fundamental computation that is crucial for heart attack prediction based on parameters like blood pressure, plasma cholesterol, and hemoglobin healthcare system, which can sense different human body parameters remotely over the Internet and then send them to an automated classification system for statistical analysis using Deep Neural Learning (DNL) techniques. The classification system is based on a DL classifier that uses IoT wearable devices log dataset to predict heart diseases. To achieve more accuracy a CCMARD approach is implemented. CCMARD is a (Multi -Agent reinforcement learning) approach. It can be classified into two categories. First, the Agent based approach provides the overall theoretical verifications. Second, Formalized approach provides the theoretical results for Patient Health monitoring system. By this way, an efficient diseased patient health monitoring is carried out with minimal time consumption. For experimentation, systematic cardiovascular healthcare data is produced utilizing Kaggle dataset and medicinal gadgets to foresee the diverse patient levels of disease severity. A detailed comparative analysis is carried out and the simulation outcome ensured the goodness of the CCMARD method over the compared methods under various aspects.

🏷️ Keywords

Internet of Things Big Data CCMARD Technique Deep Neural Learning process Multi- Agent Reinforcement Learning Health Monitoring.

📚 How to Cite:

V. Deepa, Dr .Rajeswari , A CANONICAL CORRELATED MULTI-AGENT REINFORCEMENT FOR E-HEALTHCARE MONITORING , Volume 9 , Issue 9, september 2023, EPRA International Journal of Multidisciplinary Research (IJMR) ,

🔗 PDF URL

https://cdn.eprapublishing.org/article/658pm_23.EPRA JOURNALS14331.pdf

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