A Self-Organized Learning Model for Anomalies Detection: Application to Elderly People

Nicolas Verstaevel, J. Georgé, C. Bernon, M. Gleizes
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引用次数: 4

Abstract

In a context of a rapidly growing population of elderly people, this paper introduces a novel method for behavioural anomaly detection relying on a self-organized learning process. This method first models the Circadian Activity Rhythm of a set of sensors and compares it to a nominal profile to determine variations in patients' activities. The anomalies are detected by a multi-agent system as a linear relation of those variations, weighted by influence parameters. The problem of adaptation to a particular patient then becomes the problem of learning the adequate influence parameters. Those influence parameters are self-adjusted, using feedback provided at any time by the medical staff. This approach is evaluated on a synthetic environment and results show both the capacity to effectively learn influence parameters and the resilience of this system to parameter size. Details on the ongoing real-world experimentation are provided.
异常检测的自组织学习模型:在老年人中的应用
在老年人口快速增长的背景下,本文介绍了一种基于自组织学习过程的行为异常检测新方法。该方法首先模拟一组传感器的昼夜活动节奏,并将其与标称轮廓进行比较,以确定患者活动的变化。多智能体系统将异常作为这些变化的线性关系进行检测,并通过影响参数进行加权。适应特定病人的问题就变成了学习适当的影响参数的问题。这些影响参数可根据医务人员随时提供的反馈进行自我调整。在一个综合环境中对该方法进行了评估,结果表明该方法具有有效学习影响参数的能力和系统对参数大小的弹性。提供了正在进行的现实世界实验的细节。
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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