矩阵剖面十六:海量时间序列档案的高效标注

Frank Madrid, Shailendra Singh, Q. Chesnais, K. Mauck, Eamonn J. Keogh
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引用次数: 2

摘要

在昆虫学和运动医学等不同的领域,分析师通常需要标记大量的时间序列数据。在极少数情况下,这可以通过分类算法自动完成。然而,在许多领域,复杂、嘈杂和多态的数据可以击败最先进的分类器,但很容易屈服于人类的检查和注释。如果人类可以访问辅助信息和以前的注释,这一点尤其正确。这个标记任务可能是科学进步的一个重要瓶颈。例如,昆虫学或运动生理学实验室可能每天产生几天的时间序列。在这项工作中,我们引入了一种算法,大大减少了所需的人力。我们的交互式算法对子序列进行分组,并邀请用户给组的原型贴上标签,将标签刷给组的所有成员。因此,我们的任务简化为优化分组,以允许我们的系统向用户询问最少的问题。正如我们将展示的那样,在不同的领域,我们可以减少至少一个数量级的人力,而不会降低准确性。
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Matrix Profile XVI: Efficient and Effective Labeling of Massive Time Series Archives
In domains as diverse as entomology and sports medicine, analysts are routinely required to label large amounts of time series data. In a few rare cases, this can be done automatically with a classification algorithm. In many domains however, complex, noisy, and polymorphic data can defeat state-of-the-art classifiers, yet easily yield to human inspection and annotation. This is especially true if the human can access auxiliary information and previous annotations. This labeling task can be a significant bottleneck in scientific progress. For example, an entomology or sports physiology lab may produce several days worth of time series each day. In this work, we introduce an algorithm that greatly reduces the human effort required. Our interactive algorithm groups subsequences and invites the user to label a group's prototype, brushing the label to all members of the group. Thus, our task reduces to optimizing the grouping(s), to allow our system to ask the fewest questions of the user. As we shall show, on diverse domains, we can reduce the human effort by at least an order of magnitude, with no decrease in accuracy.
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