With the latest advances in Deep Learning-based generative models, it has not taken long to take advantage of their remarkable performance in the area of time series. Deep neural networks used to work with time series heavily depend on the size and consistency of the datasets used in training. These features are not usually abundant in the real world, where they are usually limited and often have constraints that must be guaranteed. Therefore, an effective way to increase the amount of data is by using Data Augmentation techniques, either by adding noise or permutations and by generating new synthetic data. This work systematically reviews the current state-of-the-art in the area to provide an overview of all available algorithms and proposes a taxonomy of the most relevant research. The efficiency of the different variants will be evaluated as a central part of the process, as well as the different metrics to evaluate the performance and the main problems concerning each model will be analysed. The ultimate aim of this study is to provide a summary of the evolution and performance of areas that produce better results to guide future researchers in this field.
翻译:随着基于深度学习的生成模型最新技术的发展,不久就利用它们在时间序列领域的卓越性能。用于处理时间序列的深层神经网络在很大程度上取决于用于训练的数据集的大小和一致性。这些功能在真实世界中通常不足,并且通常具有必须保证的约束条件。因此,增加数据量的有效方法是使用数据增强技术,通过添加噪声或排列和生成新的合成数据。本文系统地审查了当前领域的最新研究现状,提供了所有可用算法的概览,并提出了最相关研究的分类法。将评估不同变体的效率作为过程的核心部分,以及评估性能的不同指标以及分析每个模型的主要问题。这项研究最终的目的是提供一个演变和表现良好领域的总结,为指导未来的研究人员提供帮助。