A Novel Machine Learning-Based Approach for Outlier Detection in Smart Healthcare Sensor Clouds

Rajendra Kumar Dwivedi, R. Kumar, R. Buyya
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引用次数: 2

Abstract

A smart healthcare sensor cloud is an amalgamation of the body sensor networks and the cloud that facilitates the early diagnosis of diseases and the real-time monitoring of patients. Sensitive data of the patients which are stored in the cloud must be free from outliers that may be caused by malfunctioned hardware or the intruders. This paper presents a machine learning-based scheme for outlier detection in smart healthcare sensor clouds. The proposed scheme is a hybrid of clustering and classification techniques in which a two-level framework is devised to identify the outliers precisely. At the first level, a density-based scheme is used for clustering while at the second level, a Gaussian distribution-based approach is used for classification. This scheme is implemented in Python and compared with a clustering-based approach (Mean Shift) and a classification-based approach (Support Vector Machine) on two different standard datasets. The proposed scheme is evaluated on various performance metrics. Results demonstrate the superiority of the proposed scheme over the existing ones.
基于机器学习的智能医疗传感器云异常点检测新方法
智能医疗传感器云是身体传感器网络和云的融合,有助于疾病的早期诊断和患者的实时监控。存储在云中的患者敏感数据必须不存在可能由硬件故障或入侵者造成的异常值。本文提出了一种基于机器学习的智能医疗传感器云异常点检测方案。提出的方案是聚类和分类技术的混合,其中设计了一个两级框架来精确识别异常值。在第一级,使用基于密度的方案进行聚类,而在第二级,使用基于高斯分布的方法进行分类。该方案在Python中实现,并在两个不同的标准数据集上与基于聚类的方法(Mean Shift)和基于分类的方法(支持向量机)进行比较。根据各种性能指标对所提出的方案进行了评估。结果表明,该方案优于现有方案。
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