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A fast shapelet selection algorithm for time series classification

机译:时间序列分类的快速Shapelet选择算法

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Time series classification has attracted significant interest over the past decade. One of the promising approaches is shapelet based algorithms, which are interpretable, more accurate and faster than most classifiers. However, the training time of shapelet based algorithms is high, even though it is computed offline. To overcome this problem, in this paper, we propose a fast shapelet selection algorithm (FSS), which sharply reduces the time consumption of shapelet selection. In our algorithm, we first sample some time series from a training dataset with the help of a subclass splitting method. Then FSS identifies the local farthest deviation points (LFDPs) for the sampled time series and selects the subsequences between two nonadjacent LFDPs as shapelet candidates. Using these two steps, the number of shapelet candidates is greatly reduced, which leads to an obvious reduction in time complexity. Unlike other methods that accelerate the shapelet selection process at the expense of a reduction in accuracy, the experimental results demonstrate that FSS is thousands of times faster than the original shapelet transformation method, with no reduction in accuracy. Our results also demonstrate that our method is the fastest among shapelet based methods that have the leading level of accuracy. (C) 2018 Elsevier B.V. All rights reserved.
机译:在过去的十年中,时间序列分类引起了极大的兴趣。一种有希望的方法是基于Shapelet的算法,该算法比大多数分类器可解释,更准确和更快。但是,即使基于脱机计算,基于Shapelet的算法的训练时间也很高。为了克服这个问题,本文提出了一种快速的小波选择算法(FSS),该算法大大减少了小波选择的时间消耗。在我们的算法中,我们首先借助子类拆分方法从训练数据集中采样一些时间序列。然后,FSS为采样的时间序列识别局部最远偏差点(LFDP),并选择两个不相邻的LFDP之间的子序列作为小波候选者。使用这两个步骤,可以大大减少小形候选对象的数量,从而显着减少时间复杂度。与其他以降低精度为代价来加速小波选择过程的方法不同,实验结果表明,FSS比原始小波变换方法快数千倍,且精度没有降低。我们的结果还表明,在基于Shapelet的方法中,我们的方法是最快的,具有领先的准确性。 (C)2018 Elsevier B.V.保留所有权利。

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