Early classification of time series has been extensively studied for minimizing class prediction delay in time-sensitive applications such as healthcare and finance. A primary task of an early classification approach is to classify an incomplete time series as soon as possible with some desired level of accuracy. Recent years have witnessed several approaches for early classification of time series. As most of the approaches have solved the early classification problem with different aspects, it becomes very important to make a thorough review of the existing solutions to know the current status of the area. These solutions have demonstrated reasonable performance in a wide range of applications including human activity recognition, gene expression based health diagnostic, industrial monitoring, and so on. In this paper, we present a systematic review of current literature on early classification approaches for both univariate and multivariate time series. We divide various existing approaches into four exclusive categories based on their proposed solution strategies. The four categories include prefix based, shapelet based, model based, and miscellaneous approaches. The authors also discuss the applications of early classification in many areas including industrial monitoring, intelligent transportation, and medical. Finally, we provide a quick summary of the current literature with future research directions.
翻译:对早期时间序列分类进行了广泛研究,以尽量减少保健和金融等具有时间敏感性的应用方面的等级预测延迟,早期分类方法的一项首要任务是尽快对不完整的时间序列进行分类,并达到某种预期的准确程度。近年来出现了对时间序列进行早期分类的几种办法。由于大多数办法以不同方面解决了早期分类问题,因此对了解该地区现状的现有解决办法进行彻底审查就变得非常重要。这些办法在广泛的应用中表现出了合理的表现,包括人类活动的识别、基于健康诊断和工业监测的基因表达等。在本文件中,我们系统地审查了关于单体和多变时间序列早期分类办法的现有文献。我们根据拟议解决办法战略将现有办法分为四个专属类别。这四个类别包括基于前缀、基于形状的、基于模型的和杂项的办法。作者还讨论了早期分类在许多领域的应用,包括工业监测、智能交通和医疗。最后,我们从未来研究方向对当前文献进行简要总结。