论文标题

时间序列与全球不稳定

Time Series Alignment with Global Invariances

论文作者

Vayer, Titouan, Tavenard, Romain, Chapel, Laetitia, Courty, Nicolas, Flamary, Rémi, Soullard, Yann

论文摘要

多元时间序列是信号处理中无处不在的对象。在包括机器学习在内的各种应用中,测量两个这样的对象之间的距离或相似性是主要的关注,但是只要时间动力学和时间序列的表示,{\ em i。在这项工作中,我们通过学习特征空间的潜在全局变换以及时间对齐方式,将特征空间和时间变化的距离提出,以作为关节优化问题。我们框架的多功能性允许根据不变类别的类别进行几种变体。除其他贡献外,我们为时间序列定义了可区分的损失,并在此新几何形状下呈现了计算时间序列的两种算法。我们说明了我们对模拟和现实世界数据的兴趣,并显示了与最新方法相比,我们的方法的鲁棒性。

Multivariate time series are ubiquitous objects in signal processing. Measuring a distance or similarity between two such objects is of prime interest in a variety of applications, including machine learning, but can be very difficult as soon as the temporal dynamics and the representation of the time series, {\em i.e.} the nature of the observed quantities, differ from one another. In this work, we propose a novel distance accounting both feature space and temporal variabilities by learning a latent global transformation of the feature space together with a temporal alignment, cast as a joint optimization problem. The versatility of our framework allows for several variants depending on the invariance class at stake. Among other contributions, we define a differentiable loss for time series and present two algorithms for the computation of time series barycenters under this new geometry. We illustrate the interest of our approach on both simulated and real world data and show the robustness of our approach compared to state-of-the-art methods.

扫码加入交流群

加入微信交流群

微信交流群二维码

扫码加入学术交流群,获取更多资源