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Features Selection Model for Internet of E-Health Things Using Big Data

机译:大数据电子医疗物联网的特征选择模型

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Internet of Things (IoT) plays a key role in connecting the e-health system with the cyber world through new services and seamless interconnection between heterogeneous devices. Therefore, it becomes computationally inefficient to analyze and select features from such massive volume of data. Therefore, keeping in view the needs above, this paper presents a system architecture that selects features by using Artificial Bee Colony (ABC). Moreover, a Kalman filter is used in Hadoop ecosystem that is used for removal of noise. Furthermore, traditional MapReduce with ABC is used that enhance the processing efficiency. Moreover, a complete four-tier architecture is also proposed that efficiently aggregate the data, eliminate unnecessary data, and analyze the data by the proposed Hadoop-based ABC algorithm. To check the efficiency of the proposed algorithms exploited in the proposed system architecture, we have implemented our proposed system using Hadoop and MapReduce with the ABC algorithm. ABC algorithm is used to select features, whereas, MapReduce is supported by a parallel algorithm that efficiently processes a huge volume of data sets. The system is implemented using MapReduce tool at the top of the Hadoop parallel nodes with near real-time. Moreover, the proposed system is compared with Swarm approaches and is evaluated regarding efficiency, accuracy, and throughput by using ten different data sets. The results show that the proposed system is more scalable and efficient in selecting features.
机译:物联网(IoT)在通过新服务和异构设备之间的无缝互连将电子医疗系统与网络世界连接中发挥着关键作用。因此,从如此大量的数据中分析和选择特征在计算上效率低下。因此,鉴于上述需求,本文提出了一种通过使用人工蜂群(ABC)选择特征的系统架构。此外,在Hadoop生态系统中使用了卡尔曼滤波器,用于去除噪声。此外,使用具有ABC的传统MapReduce可提高处理效率。此外,还提出了一个完整的四层体系结构,该体系结构有效地聚合了数据,消除了不必要的数据,并通过提出的基于Hadoop的ABC算法对数据进行了分析。为了检查在所提出的系统体系结构中利用的所提出算法的效率,我们已经使用带有ABC算法的Hadoop和MapReduce实现了所提出的系统。 ABC算法用于选择要素,而MapReduce由并行算法支持,该算法可有效处理大量数据集。该系统使用Hadoop并行节点顶部的MapReduce工具几乎实时地实现。此外,将拟议的系统与Swarm方法进行了比较,并通过使用十个不同的数据集对效率,准确性和吞吐量进行了评估。结果表明,所提出的系统在选择特征方面更具可扩展性和效率。

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