A Study of Practical Causality Acquisition among Vital Signals

N. Tsuchiya, H. Nakajima
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引用次数: 1

Abstract

According to increase in the number of sensors, the target system could be effectively controlled such as monitor and maintenance. Additionally, transparent causality among sensor signals should be importantly prerequisite for realizing that kind of solution. However, it is very hard to acquire the cause-effect structure among huge number of sensors. In this article, cause-effect structure acquisition is studied and discussed by employing visceral fat estimation of human body as an application. Cause-effect acquisition methods could be mainly classified into two types. One is based on human experts’ knowledge and the other is using sensory data. They have different effectiveness and ineffectiveness each other. The authors propose the combinational method of them based on the notion of human-machine collaboration.
生命信号的实际因果关系获取研究
通过增加传感器的数量,可以对目标系统进行有效的监控和维护。此外,传感器信号之间透明的因果关系应该是实现这种解决方案的重要前提。然而,在大量的传感器中,很难获得它们之间的因果结构。本文以人体内脏脂肪估算为应用,对因果结构获取进行了研究和讨论。因果获取方法主要分为两类。一种是基于人类专家的知识,另一种是使用感官数据。它们具有不同的有效性和无效性。基于人机协作的概念,提出了二者的组合方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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