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At Sensor Diagnosis for Smart Healthcare: Probability or Conditional Probability Based Approach vs. k-Nearest Neighbour

机译:在智能医疗的传感器诊断中:基于概率或有条件概率的方法与k最近邻居

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摘要

In order to implement IoT-based health-care for improved quality of life, we have to deal with sensor and communication technologies. In this article, the authors propose an approach to analyse real-time data streaming from a patient's surface body sensors, which are to be looked upon in a small sliding window frame. Time series analysis of data from the sensors is effective in reducing the round-trip delay between patient and the medical server. Two algorithms are for the sensor, and odd measures are proposed based on joint probability and joint conditional probability. The proposed algorithms are to be SQL compliant, as traces of at-sensor UDBMS alongside elementary capabilities supports databases with a meagre amount of SQL, which is evident in the literature.
机译:为了实施基于物联网的医疗保健以改善生活质量,我们必须应对传感器和通信技术。在本文中,作者提出了一种分析来自患者表面身体传感器的实时数据流的方法,该方法将在一个小的滑动窗口框架中查看。对来自传感器的数据进行时间序列分析可有效减少患者与医疗服务器之间的往返延迟。传感器有两种算法,并根据联合概率和联合条件概率提出了奇数测度。所提出的算法应与SQL兼容,因为在传感器UDBMS的痕迹和基本功能的支持下,SQL数量很少,这在文献中是显而易见的。

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