一种用于时间序列学习的自适应时间翘曲距离

R. Gaudin, N. Nicoloyannis
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引用次数: 12

摘要

大多数时间序列数据集的机器学习和数据挖掘算法都需要一个合适的距离度量。除了经典的p-范数距离之外,还有许多其他的距离测量方法,其中最流行的是动态时间翘曲。本文提出了一种新的距离度量,称为自适应时间翘曲(ATW),它对以前所有的时间翘曲距离进行了推广。根据当前需要解决的分类问题,我们提出了一个使用遗传算法以局部最优方式适应ATW的学习过程。对于所有分类问题,有可能证明具有最优参数的ATW至少与其他时间翘曲距离相等或最好优于其他时间翘曲距离。我们通过对两个真实数据集进行比较测试来证明这一断言。这项工作的独创性在于,我们提出了一个直接基于距离测量的整个学习过程,而不是基于时间序列本身
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An Adaptable Time Warping Distance for Time Series Learning
Most machine learning and data mining algorithms for time series datasets need a suitable distance measure. In addition to classic p-norm distance, numerous other distance measures exist and the most popular is dynamic time warping. Here we propose a new distance measure, called adaptable time warping (ATW), which generalizes all previous time warping distances. We present a learning process using a genetic algorithm that adapts ATW in a locally optimal way, according to the current classification issue we have to resolve. It's possible to prove that ATW with optimal parameters is at least equivalent or at best superior to the other time warping distances for all classification problems. We show this assertion by performing comparative tests on two real datasets. The originality of this work is that we propose a whole learning process directly based on the distance measure rather than on the time series themselves
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