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

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conference contribution
posted on 2024-11-14, 09:11 authored by Nicolas Verstaevel, Jean-Pierre George, Carole Bernon, Marie-Pierre Gleizes
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.

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Citation

Verstaevel, N., George, J., Bernon, C. & Gleizes, M. (2018). A Self-Organized Learning Model for Anomalies Detection: Application to Elderly People. 12th IEEE International Conference on Self-Adaptive and Self-Organizing Systems, SASO 2018 (pp. 70-79). United States: IEEE.

Parent title

International Conference on Self-Adaptive and Self-Organizing Systems, SASO

Volume

2018-September

Pagination

70-79

Language

English

RIS ID

129928

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