论文标题

深度学习时间序列分类

Deep learning for time series classification

论文作者

Fawaz, Hassan Ismail

论文摘要

时间序列分析是一个数据科学领域,对分析及时排序的数值序列感兴趣。时间序列特别有趣,因为它们使我们能够随着时间的流逝可视化和理解过程的演变。他们的分析可以揭示数据之间的趋势,关系和相似性。有许多领域包含时间序列的数据:医疗保健(心电图,血糖等),活动识别,遥感,金融(股票市场价格),行业(传感器)等。时间序列分类包括构建专门用于自动标记时间序列数据的算法。时间序列数据的顺序方面需要开发能够利用此时间属性的算法,从而使现有的现有机器学习模型用于传统的表格数据,以求解解决基本任务的次要数据。在这种情况下,近年来,深度学习已成为解决监督分类任务的最有效方法之一,尤其是在计算机视觉领域。本论文的主要目的是研究和开发专门为时间序列数据分类而构建的深层神经网络。因此,我们进行了第一项大规模实验研究,使我们能够比较现有的深度方法并将其定位为比较其他基于非深度学习的最先进方法。随后,我们在这一领域做出了许多贡献,特别是在转移学习,数据增强,结合和对抗性攻击的背景下。最后,我们还根据著名的Inception网络(Google)提出了一种新颖的体系结构,该建筑是迄今为止最有效的建筑。

Time series analysis is a field of data science which is interested in analyzing sequences of numerical values ordered in time. Time series are particularly interesting because they allow us to visualize and understand the evolution of a process over time. Their analysis can reveal trends, relationships and similarities across the data. There exists numerous fields containing data in the form of time series: health care (electrocardiogram, blood sugar, etc.), activity recognition, remote sensing, finance (stock market price), industry (sensors), etc. Time series classification consists of constructing algorithms dedicated to automatically label time series data. The sequential aspect of time series data requires the development of algorithms that are able to harness this temporal property, thus making the existing off-the-shelf machine learning models for traditional tabular data suboptimal for solving the underlying task. In this context, deep learning has emerged in recent years as one of the most effective methods for tackling the supervised classification task, particularly in the field of computer vision. The main objective of this thesis was to study and develop deep neural networks specifically constructed for the classification of time series data. We thus carried out the first large scale experimental study allowing us to compare the existing deep methods and to position them compared other non-deep learning based state-of-the-art methods. Subsequently, we made numerous contributions in this area, notably in the context of transfer learning, data augmentation, ensembling and adversarial attacks. Finally, we have also proposed a novel architecture, based on the famous Inception network (Google), which ranks among the most efficient to date.

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