Gaussian Distribution-Based Machine Learning Scheme for Anomaly Detection in Healthcare Sensor Cloud

Rajendra Kumar Dwivedi, Rakesh Kumar, R. Buyya
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引用次数: 18

Abstract

Smart information systems are based on sensors that generate a huge amount of data. This data can be stored in cloud for further processing and efficient utilization. Anomalous data might be present within the sensor data due to various reasons (e.g., malicious activities by intruders, low quality sensors, and node deployment in harsh environments). Anomaly detection is crucial in some applications such as healthcare monitoring systems, forest fire information systems, and other internet of things (IoT) systems. This paper proposes a Gaussian distribution-based supervised machine learning scheme of anomaly detection (GDA) for healthcare monitoring sensor cloud, which is an integration of various body sensors of different patients and cloud. This work is implemented in Python. Use of Gaussian statistical model in the proposed scheme improves precision, throughput, and efficiency. GDA provides 98% efficiency with 3% and 4% improvements as compared to the other supervised learning-based anomaly detection schemes (e.g., support vector machine [SVM] and self-organizing map [SOM], respectively).
基于高斯分布的医疗传感器云异常检测机器学习方案
智能信息系统是基于产生大量数据的传感器。这些数据可以存储在云中,以便进一步处理和有效利用。由于各种原因(例如,入侵者的恶意活动、低质量传感器和恶劣环境中的节点部署),传感器数据中可能存在异常数据。异常检测在医疗监控系统、森林火灾信息系统和其他物联网(IoT)系统等应用中至关重要。本文提出了一种基于高斯分布的医疗监测传感器云异常检测(GDA)监督机器学习方案,该方案是不同患者的各种身体传感器与云的集成。这项工作是用Python实现的。该方案采用高斯统计模型,提高了精度、吞吐量和效率。与其他基于监督学习的异常检测方案(例如,支持向量机[SVM]和自组织映射[SOM])相比,GDA提供了98%的效率,分别提高了3%和4%。
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