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Multivariate Time Series Early Classification Using Multi-Domain Deep Neural Network

机译:使用多域深度神经网络的多元时间序列早期分类

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Early classification on multivariate time series is an important research topic in data mining with wide applications to various domains like medical diagnosis, motion detection and financial prediction, etc. Shapelet is probably one of the most commonly used approaches to tackle early classification problem, but one drawback of shaplet is its inefficiency. More importantly, the extracted shapelets may not be applicable to every test case at any time point. This work focuses on early classification of multivariate time series and proposes a novel framework named Multi-Domain Deep Neural Network (MDDNN), in which convolutional neural network (CNN) and long-short term memory (LSTM) are incorporated to learn feature representation and relationship embedding in the long sequences with long time lags. The proposed model can make predictions at any time point of a multivariate time series with the help of a truncation process. We conducted experiments on four real datasets and compared with state-of-the-art algorithms. The experimental results indicate that the proposed method outperforms the alternatives significantly on both of earliness and accuracy. Detailed analysis about the proposed model is also provided in this work. To the best of our knowledge, this is the first work that incorporates deep neural network methods (CNN and LSTM) and multi-domain approach to boost the problem of early classification on multivariate time series.
机译:多元时间序列的早期分类是数据挖掘中的重要研究课题,广泛应用于医疗诊断,运动检测和财务预测等各个领域。Shapelet可能是解决早期分类问题的最常用方法之一,但其中之一Shaplet的缺点是效率低下。更重要的是,提取的小图形可能在任何时间点都不适用于每个测试用例。这项工作着重于对多元时间序列的早期分类,并提出了一个名为多域深度神经网络(MDDNN)的新颖框架,其中将卷积神经网络(CNN)和长期短期记忆(LSTM)结合在一起以学习特征表示和关系嵌入在具有较长时间滞后的长序列中。提出的模型可以借助截断过程在多元时间序列的任何时间点进行预测。我们对四个真实数据集进行了实验,并与最新算法进行了比较。实验结果表明,该方法在早期性和准确性上均明显优于其他方法。在这项工作中还提供了有关建议的模型的详细分析。据我们所知,这是将深度神经网络方法(CNN和LSTM)和多域方法相结合的第一项工作,以解决多元时间序列上的早期分类问题。

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