G-CMP: Graph-enhanced Contextual Matrix Profile for unsupervised anomaly detection in sensor-based remote health monitoring

Nivedita Bijlani, Oscar Alejandro Mendez Maldonado, S. Kouchaki
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Abstract

Sensor-based remote health monitoring is used in industrial, urban and healthcare settings to monitor ongoing operation of equipment and human health. An important aim is to intervene early if anomalous events or adverse health is detected. In the wild, these anomaly detection approaches are challenged by noise, label scarcity, high dimensionality, explainability and wide variability in operating environments. The Contextual Matrix Profile (CMP) is a configurable 2-dimensional version of the Matrix Profile (MP) that uses the distance matrix of all subsequences of a time series to discover patterns and anomalies. The CMP is shown to enhance the effectiveness of the MP and other SOTA methods at detecting, visualising and interpreting true anomalies in noisy real world data from different domains. It excels at zooming out and identifying temporal patterns at configurable time scales. However, the CMP does not address cross-sensor information, and cannot scale to high dimensional data. We propose a novel, self-supervised graph-based approach for temporal anomaly detection that works on context graphs generated from the CMP distance matrix. The learned graph embeddings encode the anomalous nature of a time context. In addition, we evaluate other graph outlier algorithms for the same task. Given our pipeline is modular, graph construction, generation of graph embeddings, and pattern recognition logic can all be chosen based on the specific pattern detection application. We verified the effectiveness of graph-based anomaly detection and compared it with the CMP and 3 state-of-the art methods on two real-world healthcare datasets with different anomalies. Our proposed method demonstrated better recall, alert rate and generalisability.
G-CMP:基于传感器的远程健康监测中无监督异常检测的图形增强上下文矩阵配置文件
基于传感器的远程健康监测用于工业、城市和医疗保健环境,以监测设备的持续运行和人类健康。一个重要的目的是在发现异常事件或不良健康时尽早干预。在野外,这些异常检测方法受到噪声、标签稀缺性、高维性、可解释性和操作环境的广泛变化的挑战。上下文矩阵配置文件(CMP)是矩阵配置文件(MP)的可配置二维版本,它使用时间序列的所有子序列的距离矩阵来发现模式和异常。CMP被证明可以增强MP和其他SOTA方法在检测、可视化和解释来自不同领域的嘈杂现实世界数据中的真实异常方面的有效性。它擅长在可配置的时间尺度上缩小和识别时间模式。然而,CMP不能处理跨传感器信息,也不能扩展到高维数据。我们提出了一种新颖的、基于自监督图的时间异常检测方法,该方法适用于从CMP距离矩阵生成的上下文图。学习到的图嵌入对时间上下文的异常性质进行编码。此外,我们还评估了用于相同任务的其他图离群算法。鉴于我们的管道是模块化的,图的构造、图嵌入的生成和模式识别逻辑都可以根据特定的模式检测应用来选择。我们验证了基于图的异常检测的有效性,并在两个具有不同异常的真实医疗保健数据集上将其与CMP和3种最先进的方法进行了比较。该方法具有较好的召回率、警觉率和通用性。
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