An Examination of the State-of-the-Art for Multivariate Time Series Classification

Bhaskar Dhariyal, T.P Le Nguyen, S. Gsponer, Georgiana Ifrim
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引用次数: 11

Abstract

The UEA Multivariate Time Series Classification (MTSC) archive released in 2018 provides an opportunity to evaluate many existing time series classifiers on the MTSC task. Nevertheless, although many new TSC approaches were proposed recently, a comprehensive overview and empirical evaluation of techniques for the MTSC task is currently missing from the time series literature. In this work, we investigate the state-of-the-art for multivariate time series classification using the UEA MTSC benchmark. We compare recent methods originally developed for univariate TSC, to bespoke methods developed for MTSC, ranging from the classic DTW baseline to very recent linear classifiers (e.g., MrSEQL, ROCKET) and deep learning methods (e.g., MLSTM-FCN, TapNet). We aim to understand whether there is any benefit in learning complex dependencies across different time series dimensions versus treating dimensions as independent time series, and we analyse the predictive accuracy, as well as the efficiency of these methods. In addition, we propose a simple statistics-based time series classifier as an alternative to the DTW baseline. We show that our simple classifier is as accurate as DTW, but is an order of magnitude faster. We also find that recent methods that achieve state-of-the-art accuracy for univariate TSC, such as ROCKET, also achieve high accuracy on the MTSC task, but recent deep learning MTSC methods do not perform as well as expected.
多元时间序列分类研究进展
2018年发布的东安格利亚大学多元时间序列分类(MTSC)档案为评估MTSC任务上的许多现有时间序列分类器提供了机会。然而,尽管最近提出了许多新的TSC方法,但目前时间序列文献中缺乏对MTSC任务技术的全面概述和经验评估。在这项工作中,我们研究了使用UEA MTSC基准的多变量时间序列分类的最新技术。我们比较了最初为单变量TSC开发的最新方法,以及为MTSC开发的定制方法,范围从经典的DTW基线到最近的线性分类器(例如,MrSEQL, ROCKET)和深度学习方法(例如,MLSTM-FCN, TapNet)。我们的目标是了解在不同时间序列维度上学习复杂依赖关系与将维度视为独立时间序列是否有任何好处,我们分析了这些方法的预测准确性以及效率。此外,我们提出了一个简单的基于统计的时间序列分类器作为DTW基线的替代方案。我们证明了我们的简单分类器与DTW一样准确,但速度要快一个数量级。我们还发现,最近在单变量TSC上达到最先进精度的方法,如ROCKET,在MTSC任务上也达到了很高的精度,但最近的深度学习MTSC方法的表现不如预期的那么好。
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