L. van de Kamp;B. Hunnekens;T. Oomen;N. van de Wouw
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引用次数: 0
Abstract
Safe deployment of neural networks to classify time series in safety-critical applications relies on the ability of the classifier to detect data that does not originate from the same distribution as the training data. The aim of this paper is to propose a framework for detecting whether time-series data is sampled from a different distribution than the training data, known as the problem of out-of-distribution (OOD) detection. We propose a novel distance-based OOD method for time-series data using a hierarchical clustering method together with dynamic time-warping to measure the difference between a new data instance and the training set. The method is evaluated in the context of mechanical ventilation, a safety critical application, using both simulated and clinical datasets. Results of the mechanical ventilation use case demonstrate that the proposed approach effectively detects out-of-distribution data and improves classification performance in diverse settings.
在安全关键应用中,安全部署神经网络对时间序列进行分类依赖于分类器检测与训练数据不同分布的数据的能力。本文的目的是提出一个框架,用于检测时间序列数据是否从不同于训练数据的分布中采样,称为out- distribution (OOD)检测问题。我们提出了一种新的基于距离的时间序列数据OOD方法,使用层次聚类方法和动态时间规整来度量新数据实例与训练集之间的差异。该方法在机械通气这一安全关键应用的背景下进行评估,使用模拟和临床数据集。机械通气用例的结果表明,该方法可以有效地检测出分布外数据,并提高了不同设置下的分类性能。