Feature-based comparison and generation of time series

Lars Kegel, M. Hahmann, Wolfgang Lehner
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引用次数: 27

Abstract

For more than three decades, researchers have been developping generation methods for the weather, energy, and economic domain. These methods provide generated datasets for reasons like system evaluation and data availability. However, despite the variety of approaches, there is no comparative and cross-domain assessment of generation methods and their expressiveness. We present a similarity measure that analyzes generation methods regarding general time series features. By this means, users can compare generation methods and validate whether a generated dataset is considered similar to a given dataset. Moreover, we propose a feature-based generation method that evolves cross-domain time series datasets. This method outperforms other generation methods regarding the feature-based similarity.
基于特征的时间序列比较与生成
三十多年来,研究人员一直在开发用于天气、能源和经济领域的发电方法。这些方法为系统评估和数据可用性等原因提供生成的数据集。然而,尽管有各种各样的方法,却没有对生成方法及其表达性进行比较和跨领域的评估。我们提出了一种相似性度量,分析了关于一般时间序列特征的生成方法。通过这种方式,用户可以比较生成方法,并验证生成的数据集是否与给定的数据集相似。此外,我们还提出了一种基于特征的跨域时间序列数据集演化生成方法。该方法在基于特征的相似度方面优于其他生成方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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