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An Effective Martin Kernel for Time Series Classification

机译:时间序列分类的有效马丁核

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Time series classification has attracted a lot of attention in recent years. However, the original data often corrupted with noise. To alleviate this problem, many approaches try to perform nonlinear transformation, such that the resulting space could give out the most relevant features. Since the resulting space is not a Euclidean space, strong assumptions are needed for many kernel-based methods for the purpose of obtaining a reasonable measurement. In this paper we propose a novel approach based on Martin distance. The Martin distance is applied to measure the pairwise distance in the resulting space, without imposing strong assumptions on model states. Experiments on several benchmark datasets demonstrate the advantages of the proposed kernel on its effectiveness and performance.
机译:近年来,时间序列分类吸引了很多关注。但是,原始数据经常被噪声破坏。为了减轻这个问题,许多方法尝试执行非线性变换,以使得结果空间可以给出最相关的特征。由于结果空间不是欧几里得空间,因此许多基于核的方法都需要强有力的假设才能获得合理的度量。在本文中,我们提出了一种基于马丁距离的新颖方法。马丁距离用于测量结果空间中的成对距离,而无需在模型状态上强加假设。在几个基准数据集上进行的实验证明了所提出的内核在有效性和性能方面的优势。

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