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引用次数: 1
摘要
动态时间规整(DTW)是解决两个序列之间差异测量挑战的最成功的方法之一,它对序列沿时间轴的偏移和失真具有鲁棒性。在此基础上,提出了一种新的时间序列数据损失函数Gumbel-Softmin Based fast DTW (GDTW)。据我们所知,这是与序列长度线性扩展的序列数据的第一个可微DTW损失。本文提出的Gumbel-Softmin取代了DTW中简单的最小化算子,从而更好地集成了加速技术。我们还设计了一个结合GDTW作为特征提取器的深度学习模型。在广泛的时间序列分析任务中进行了彻底的实验,显示了我们的方法的效率和有效性。
GDTW: A Novel Differentiable DTW Loss for Time Series Tasks
Dynamic time warping (DTW) is one of the most successful methods that addresses the challenge of measuring the discrepancy between two series, which is robust to shift and distortion along the time axis of the sequence. Based on DTW, we propose a novel loss function for time series data called Gumbel-Softmin based fast DTW (GDTW). To the best of our knowledge, this is the first differentiable DTW loss for series data that scales linearly with the sequence length. The proposed Gumbel-Softmin replaces the simple minimization operator in DTW so as to better integrate the acceleration technology. We also design a deep learning model combining GDTW as a feature extractor. Thorough experiments over a broad range of time series analysis tasks were performed, showing the efficiency and effectiveness of our method.