学习DTW-Shapelets用于时间序列分类

Mit Shah, Josif Grabocka, Nicolas Schilling, Martin Wistuba, L. Schmidt-Thieme
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引用次数: 43

摘要

Shapelets是时间序列中的判别模式,当它们到各自时间序列的距离被用作分类器的特征时,它可以最好地预测目标变量。由于shapelet是长度小于或等于我们数据集中最短时间序列长度的任何时间序列,因此数据中存在大量可能的shapelet。最初,shapelets是通过提取大量候选对象并评估它们的预测质量来发现的。然后,Grabocka等人提出了一种新的学习时间序列小波的方法,称为LTS。提出了一种新的基于分类目标函数的任务数学形式化方法,并应用了定制的随机梯度学习。它可以学习接近最优的shapelets,而无需尝试大量候选对象的开销。该方法采用欧几里得距离度量作为距离度量。作为一个限制,它不能学习一个单一的shapelet,它可以代表时间序列的不同子序列,这些子序列只是沿着时间轴弯曲。考虑到这些情况,我们建议使用动态时间翘曲(DTW)作为LTS框架中的距离度量。在来自UCR存储库的11个真实数据集和我们自己创建的一个合成数据集上对所提出的方法进行了评估。实验结果表明,该方法在这些数据集上的性能优于现有方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Learning DTW-Shapelets for Time-Series Classification
Shapelets are discriminative patterns in time series, that best predict the target variable when their distances to the respective time series are used as features for a classifier. Since the shapelet is simply any time series of some length less than or equal to the length of the shortest time series in our data set, there is an enormous amount of possible shapelets present in the data. Initially, shapelets were found by extracting numerous candidates and evaluating them for their prediction quality. Then, Grabocka et al. [2] proposed a novel approach of learning time series shapelets called LTS. A new mathematical formalization of the task via a classification objective function was proposed and a tailored stochastic gradient learning was applied. It enabled learning near-to-optimal shapelets without the overhead of trying out lots of candidates. The Euclidean distance measure was used as distance metric in the proposed approach. As a limitation, it is not able to learn a single shapelet, that can be representative of different subsequences of time series, which are just warped along time axis. To consider these cases, we propose to use Dynamic Time Warping (DTW) as a distance measure in the framework of LTS. The proposed approach was evaluated on 11 real world data sets from the UCR repository and a synthetic data set created by ourselves. The experimental results show that the proposed approach outperforms the existing methods on these data sets.
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