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Deep learning on symbolic representations for large-scale heterogeneous time-series event prediction

机译:大规模异构时序序列事件预测符号表示深度学习

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In this paper, we consider the problem of event prediction with multi-variate time series data consisting of heterogeneous (continuous and categorical) variables. The complex dependencies between the variables combined with asynchronicity and sparsity of the data makes the event prediction problem particularly challenging. Most state-of-art approaches address this either by designing hand-engineered features or breaking up the problem over homogeneous variates. In this work, we formulate the (rare) event prediction task as a classification problem with a novel asymmetric loss function and propose an end-to-end deep learning algorithm over symbolic representations of time-series. Symbolic representations are fed into an embedding layer and a Long Short Term Memory Neural Network (LSTM) layer which are trained to learn discriminative features. We also propose a simple sequence chopping technique to speed-up the training of LSTM for long temporal sequences. Experiments on real-world industrial datasets demonstrate the effectiveness of the proposed approach.
机译:在本文中,我们认为具有由异构(连续和分类)变量组成的多变量时间序列数据的事件预测问题。变量与数据的异步和稀疏性相结合的复杂依赖性使得事件预测问题特别具有挑战性。最先进的方法通过设计手工制作的特征或在均匀变更器上打破问题来解决这一点。在这项工作中,我们将(罕见的)事件预测任务制定为具有新颖的不对称损失函数的分类问题,并在时间序列的符号表示上提出端到端的深度学习算法。符号表示被送入嵌入层和长短期内存神经网络(LSTM)层,这些层被训练以学习鉴别特征。我们还提出了一种简单的斩波技术,可以加速LSTM的长时间序列的训练。现实世界工业数据集的实验证明了提出的方法的有效性。

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