考虑u -健康状态事件变化的时间挖掘技术的发展

Jae-In Kim, Dae-In Kim, Bu-Hyun Hwang
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引用次数: 0

摘要

U-Health通过各种传感器收集患者信息。流数据可以概括为一个间隔事件,在开始时间点和结束时间点之间有一个间隔。大多数时态挖掘技术只考虑事件发生的时间点,而忽略了流数据的状态变化。本文提出了一种考虑U-Health事件状态变化的时间挖掘技术。我们的方法通过将U-Health中的重要事件从传感器发送到服务器来克服环境的限制。我们定义了流数据的四种事件状态,并考虑状态的事件变化进行时态数据挖掘。最后,我们可以通过在时间关系序列中描述事件之间的因果关系来消除发现规则的模糊性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
The Development of Temporal Mining Technique Considering the Event Change of State in U-Health
U-Health collects patient information with various kinds of sensor. Stream data can be summarized as an interval event which has aninterval between start-time-point and end-time-point. Most of temporal mining techniques consider only the event occurrence-time-point and ignore stream data change of state. In this paper, we propose the temporal mining technique considering the event change of state in U-Health. Our method overcomes the restrictions of the environment by sending a significant event in U-Health from sensors to a server. We define four event states of stream data and perform the temporal data mining considered the event change of state. Finally, we can remove an ambiguity of discovered rules by describing cause-and-effect relations among events in temporal relation sequences.
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