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Multivariate time series classification with temporal abstractions

机译:具有时间抽象的多元时间序列分类

摘要

The increase in the number of complex temporal datasets collected today has prompted the development of methods that extend classical machine learning and data mining methods to time-series data. This work focuses on methods for multivariate time-series classification. Time series classification is a challenging problem mostly because the number of temporal features that describe the data and are potentially useful for classification is enormous. We study and develop a temporal abstraction framework for generating multivariate time series features suitable for classification tasks. We propose the STF-Mine algorithm that automatically mines discriminative temporal abstraction patterns from the time series data and uses them to learn a classification model. Our experimental evaluations, carried out on both synthetic and real world medical data, demonstrate the benefit of our approach in learning accurate classifiers for time-series datasets. Copyright © 2009, Assocation for the Advancement of ArtdicaI Intelligence (www.aaai.org). All rights reserved.
机译:如今,收集的复杂时间数据集的数量增加,促使人们开发了将经典机器学习和数据挖掘方法扩展到时间序列数据的方法。这项工作着重于多元时间序列分类的方法。时间序列分类是一个具有挑战性的问题,主要是因为描述数据并且可能对分类有用的时间特征数量众多。我们研究和开发了一个用于生成适用于分类任务的多元时间序列特征的时间抽象框架。我们提出了STF-Mine算法,该算法可自动从时间序列数据中挖掘可区分的时间抽象模式,并使用它们来学习分类模型。我们对合成医学和现实医学数据进行的实验评估证明了我们的方法在学习时间序列数据集的准确分类器方面的好处。版权所有©2009,ArtdicaI情报促进协会(www.aaai.org)。版权所有。

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