利用过程挖掘方法揭示人类日常活动模式

M. Ma’arif
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引用次数: 12

摘要

近年来,随着环境辅助生活的出现,对人类行为模式的研究引起了世界各地研究界的广泛兴趣。在许多文献中,模式识别被广泛采用来实现从计算角度对人类行为的研究。模式识别在人类行为建模的准确性方面带来了令人鼓舞的结果。但这种方法存在的问题是知识表示过于复杂,需要用数学模型来表述。反过来,专家们也很难进行纠正。另一方面,收集图形洞察力不是一项微不足道的任务。本文研究了过程挖掘技术的应用,为解决这类问题提供了一种选择。流程挖掘是一种数据驱动的方法,用于推断任何类型流程的图形表示。就人的行为而言,过程可以定义为人在日常生活中所进行的一系列活动。从所进行的实验中,过程挖掘显示了在图形表示中推断人类日常活动模式的潜在用途。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Revealing daily human activity pattern using process mining approach
In the last few years, with the emergence of ambient assisted living, the study of human behavioral pattern took a wide interest from research communities around the world. In many literatures, pattern recognition was widely adopted approach to implements in human behavior study from computing perspective. Pattern recognition brings a promising results in terms of accuracy for modeling human behavior. But the problem with this approach is the complexity of knowledge representation which formulated in mathematical model. In turns, a correction by the experts is hardly conducted. In another hand, gathering a graphical insight is not a trivial task. This paper investigate the use of process mining technology to gives an alternative to such problems. Process mining is data-driven approach to infer a graphical representation of any kind of process. In terms of human behavior, process can be defined as sequences of activities performed by human on daily basis. From the conducted experiments process mining was shown a potential use to infer a human daily activity pattern in a graphical representation.
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