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A Survey of Methods for Detection and Correction of Noisy Labels in Time Series Data

机译:时间序列数据中噪声标签的检测与校正方法综述

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Mislabeled data in large datasets can quickly degrade the performance of machine learning models. There is a substantial base of work on how to identify and correct instances in data with incorrect annotations. However, time series data pose unique challenges that often are not accounted for in label noise detecting platforms. This paper reviews the body of literature concerning label noise and methods of dealing with it, with a focus on applicability to time series data. Time series data visualization and feature extraction techniques used in the denoising process are also discussed.
机译:大型数据集中的错误标记数据会迅速降低机器学习模型的性能。关于如何识别和纠正带有错误注释的数据中的实例,有大量的工作基础。然而,时间序列数据带来了独特的挑战,在标签噪声检测平台中通常没有考虑到这些挑战。本文回顾了有关标签噪声及其处理方法的大量文献,重点介绍了标签噪声对时间序列数据的适用性。本文还讨论了时间序列数据可视化和特征提取技术在去噪过程中的应用。

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