StyleTime:合成时间序列生成的样式转移

Yousef El-Laham, Svitlana Vyetrenko
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引用次数: 2

摘要

神经风格转移是一种强大的计算机视觉技术,可以将一幅图像的艺术“风格”与另一幅图像的“内容”结合起来。该方法背后的基本理论依赖于一个假设,即图像的风格由其特征的Gram矩阵表示,该矩阵通常是从预训练的卷积神经网络(例如VGG-19)中提取的。这个想法不能直接扩展到时间序列的样式化,因为二维图像的样式概念与一维时间序列的样式概念不同。在这项工作中,为了合成数据的生成和增强,提出了一种新的时间序列类型转移公式。我们引入了与时间序列真实感属性直接相关的时间序列风格化特征的概念,并提出了一种新的风格化算法,称为StyleTime,它使用显式特征提取技术将一个时间序列的底层内容(趋势)与另一个时间序列的风格(分布属性)结合起来。此外,我们讨论了评估指标,并将我们的工作与现有的最先进的时间序列生成和增强方案进行了比较。为了验证我们方法的有效性,我们使用风格化的合成数据作为数据增强的手段,以提高递归神经网络模型在几个预测任务上的性能。
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StyleTime: Style Transfer for Synthetic Time Series Generation
Neural style transfer is a powerful computer vision technique that can incorporate the artistic “style" of one image to the “content" of another. The underlying theory behind the approach relies on the assumption that the style of an image is represented by the Gram matrix of its features, which is typically extracted from pre-trained convolutional neural networks (e.g., VGG-19). This idea does not straightforwardly extend to time series stylization since notions of style for two-dimensional images are not analogous to notions of style for one-dimensional time series. In this work, a novel formulation of time series style transfer is proposed for the purpose of synthetic data generation and enhancement. We introduce the concept of stylized features for time series, which is directly related to the time series realism properties, and propose a novel stylization algorithm, called StyleTime, that uses explicit feature extraction techniques to combine the underlying content (trend) of one time series with the style (distributional properties) of another. Further, we discuss evaluation metrics, and compare our work to existing state-of-the-art time series generation and augmentation schemes. To validate the effectiveness of our methods, we use stylized synthetic data as a means for data augmentation to improve the performance of recurrent neural network models on several forecasting tasks.
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