Leveraging metadata for identifying local, robust multi-variate temporal (RMT) features

Xiaolan Wang, K. Candan, M. Sapino
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引用次数: 11

Abstract

Many applications generate and/or consume multi-variate temporal data, yet experts often lack the means to adequately and systematically search for and interpret multi-variate observations. In this paper, we first observe that multi-variate time series often carry localized multi-variate temporal features that are robust against noise. We then argue that these multi-variate temporal features can be extracted by simultaneously considering, at multiple scales, temporal characteristics of the time-series along with external knowledge, including variate relationships, known a priori. Relying on these observations, we develop algorithms to detect robust multi-variate temporal (RMT) features which can be indexed for efficient and accurate retrieval and can be used for supporting analysis tasks, such as classification. Experiments confirm that the proposed RMT algorithm is highly effective and efficient in identifying robust multi-scale temporal features of multi-variate time series.
利用元数据来识别本地的、健壮的多变量时态(RMT)特征
许多应用程序生成和/或消耗多变量时间数据,但专家往往缺乏充分和系统地搜索和解释多变量观测结果的手段。在本文中,我们首先观察到多变量时间序列通常带有局部多变量时间特征,这些特征对噪声具有鲁棒性。然后,我们认为这些多变量时间特征可以通过同时考虑在多个尺度上,时间序列的时间特征以及先验已知的外部知识(包括变量关系)来提取。根据这些观察结果,我们开发了检测鲁棒多变量时间(RMT)特征的算法,这些特征可以被索引以进行有效和准确的检索,并可用于支持分析任务,如分类。实验验证了该算法对多变量时间序列的鲁棒多尺度时间特征识别的有效性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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