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Dynamic L-RNN recovery of missing data in IoMT applications

机译:IoMT应用程序中丢失数据的动态L-RNN恢复

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摘要

One of the most important factors of success of the Internet of Medical Things (IoMT) applications is reliable data delivery. The high quality of data delivery is a vital issue for IoMT applications to provide a high-quality of services to the end users. However, IoMT applications may suffer from low quality of data delivery due to several reasons, such as sensing errors, bad connections or outside attacks. As a result, the collected data is incomplete. IoMT applications require a complete data to provide a high-quality of services to the end users; otherwise, the performance will decrease and not meet the main requirements of IoMT applications. In reality, missing data should be intelligently recovered to save time and cost. In this paper, we propose a Dynamic Layered-Recurrent Neural Network (Dynamic L-RNN) approach to recover missing data from IoMT applications. The main idea is to perform a dynamic L-RNN to predict any missing value in a simple fast manner to save time and cost. The collected data is divided into two categories, complete and incomplete data. A dynamic L-RNN is trained based on complete data, which is used to predict the missing data from incomplete data. This proposed method is able to recover the missing data for IoMT applications with high AUC value when applied to two different datasets. The obtained results show great enhancement in the AUC values after recovering the missing data.
机译:可靠的数据传递是医疗物联网(IoMT)应用成功的最重要因素之一。数据传递的高质量对于IoMT应用程序向最终用户提供高质量的服务至关重要。但是,由于多种原因,例如感测错误,连接不良或外部攻击,IoMT应用程序可能会遭受数据传输质量低下的困扰。结果,收集的数据不完整。 IoMT应用程序需要完整的数据才能为最终用户提供高质量的服务;否则,性能会降低,无法满足IoMT应用程序的主要要求。实际上,应该智能地恢复丢失的数据,以节省时间和成本。在本文中,我们提出了一种动态分层递归神经网络(Dynamic L-RNN)方法,以从IoMT应用程序中恢复丢失的数据。主要思想是执行动态L-RNN,以简单快速的方式预测任何缺失值,以节省时间和成本。收集的数据分为两类,完整数据和不完整数据。动态L-RNN基于完整数据进行训练,用于从不完整数据中预测丢失的数据。当应用于两个不同的数据集时,该方法能够为具有较高AUC值的IoMT应用程序恢复丢失的数据。获得的结果表明,在恢复丢失的数据之后,AUC值有了很大的提高。

著录项

  • 来源
    《Future generation computer systems》 |2018年第12期|575-583|共9页
  • 作者单位

    Department of Information Technology, CIT collage, Taif University;

    Department of Computer Science, College of Information Technology, Zarqa University;

    Department of Computer Science, University of New Mexico;

  • 收录信息 美国《科学引文索引》(SCI);美国《工程索引》(EI);
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

    Missing data; Deep learning; IoMT;

    机译:数据丢失;深度学习;IoMT;

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