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Hardware Accelerator for Shapelet Distance Computation in Time-Series Classification

机译:时间序列分类中用于小波距离计算的硬件加速器

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Time-series classification has several important real-world applications and shapelet-based methods have emerged as highly attractive tools for this task. They are appropriate to search for time-series subsequences with high discriminative power among classes. Although these algorithms are accurate and interpretable, the task of measuring local shape similarity results in heavy computational burdens, which may limit their applicability. In this paper we address this issue by proposing a hardware accelerator to compute both Z-Score normalization and Euclidean distance. We identify these tasks as hot spots in shapelet-based TSC and propose scalable and parameterizable hardware that is suitable as a dedicated shapelet-distance engine. Results show that the proposed hardware significantly reduces the run time of the shapelet distance computation. The speedup factor increases with the shapelet length, reaching speedups of more than 5 times when compared to a software execution for shapelets with length larger than 100.
机译:时间序列分类在现实世界中有几个重要的应用,而基于shapelet的方法已成为实现此任务的极具吸引力的工具。它们适合于在类别之间搜索具有较高判别力的时间序列子序列。尽管这些算法是准确且可解释的,但测量局部形状相似性的任务会导致沉重的计算负担,这可能会限制其适用性。在本文中,我们通过提出一个硬件加速器来计算Z-Score归一化和欧几里得距离来解决此问题。我们将这些任务标识为基于Shapelet的TSC中的热点,并提出适用于专用Shapelet距离引擎的可伸缩且可参数化的硬件。结果表明,所提出的硬件大大减少了小波距离计算的运行时间。加速因子随小波片的长度而增加,与长度大于100的小波片的软件执行相比,加速比达到5倍以上。

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