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Faster and more accurate classification of time series by exploiting a novel dynamic time warping averaging algorithm

机译:通过使用新颖的动态时间规整平均算法,更快,更准确地对时间序列进行分类

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摘要

A concerted research effort over the past two decades has heralded significant improvements in both the efficiency and effectiveness of time series classification. The consensus that has emerged in the community is that the best solution is a surprisingly simple one. In virtually all domains, the most accurate classifier is the nearest neighbor algorithm with dynamic time warping as the distance measure. The time complexity of dynamic time warping means that successful deployments on resource-constrained devices remain elusive. Moreover, the recent explosion of interest in wearable computing devices, which typically have limited computational resources, has greatly increased the need for very efficient classification algorithms. A classic technique to obtain the benefits of the nearest neighbor algorithm, without inheriting its undesirable time and space complexity, is to use the nearest centroid algorithm. Unfortunately, the unique properties of (most) time series data mean that the centroid typically does not resemble any of the instances, an unintuitive and underappreciated fact. In this paper we demonstrate that we can exploit a recent result by Petitjean et al. to allow meaningful averaging of "warped" time series, which then allows us to create super-efficient nearest "centroid" classifiers that are at least as accurate as their more computationally challenged nearest neighbor relatives. We demonstrate empirically the utility of our approach by comparing it to all the appropriate strawmen algorithms on the ubiquitous UCR Benchmarks and with a case study in supporting insect classification on resource-constrained sensors.
机译:在过去的二十年中,齐心协力的研究工作预示着时间序列分类的效率和有效性都有了显着改善。社区中已经达成的共识是,最佳解决方案是一个非常简单的解决方案。在几乎所有领域中,最准确的分类器是采用动态时间规整作为距离度量的最近邻居算法。动态时间规整的时间复杂性意味着在资源受限的设备上成功部署仍然难以实现。此外,最近对通常具有有限的计算资源的可穿戴计算设备的关注激增极大地增加了对非常有效的分类算法的需求。在不继承其最不希望的时间和空间复杂性的情况下,获得最近邻算法好处的经典技术是使用最近质心算法。不幸的是,(大多数)时间序列数据的独特属性意味着质心通常与任何实例都不相似,这是一种不直观且未被充分理解的事实。在本文中,我们证明了我们可以利用Petitjean等人的最新结果。以便对“扭曲”时间序列进行有意义的平均,然后使我们能够创建超级高效的最近“质心”分类器,这些分类器的准确性至少与其在计算上面临挑战的最近邻居相对。我们通过将其与无处不在的UCR基准上所有合适的草民算法进行比较,并以在资源受限的传感器上支持昆虫分类的案例研究,从经验上证明了我们方法的实用性。

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