Abstract
AbstractThis paper presents a framework for learning event sequences for anomaly detection in a smart home environment. It addresses environment conditions, device grouping, system performance and explainability of anomalies. Our method models user behavior as sequences of events, triggered by interaction of the home residents with the Internet of Things (IoT) devices. Based on a given set of recorded event sequences, the system can learn the habitual behavior of the residents. An anomaly is described as deviation from that normal behavior, previously learned by the system. One key feature of our framework is the explainability of detected anomalies, which is implemented through a simple rule analysis.
Funder
Ministry of Economic Affairs, Innovation, Digitalisation and Energy (MWIDE) of the State of North Rhine-Westphalia within the Leading-Edge Cluster Intelligent Technical Systems OstWestfalenLippe
Fachhochschule Bielefeld
Publisher
Springer Science and Business Media LLC
Reference17 articles.
1. Fendrich K, Hoffmann W (2007) More than just aging societies: the demographic change has an impact on actual numbers of patients. J Public Health 15(5):345–351
2. Bundesamt S (2019) Pflegestatistik - pflege im rahmen der pflegeversicherung. https://www.destatis.de/DE/Themen/Gesellschaft-Umwelt/Gesundheit/Pflege/Publikationen/Downloads-Pflege/pflege-deutschlandergebnisse-5224001199004.html
3. Das D, Nishimura Y, Vivek RP, Takeda N, Fish ST, Ploetz T, Chernova S (2021) Explainable activity recognition for smart home systems. arXiv preprint arXiv:2105.09787
4. Davidson I (2007) Anomaly detection, explanation and visualization. Tech. Rep, SGI, Tokyo, Japan
5. Chandola V, Banerjee A, Kumar V (2009) Anomaly detection: a survey. ACM Comput Surveys (CSUR) 41(3):1–58
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