Manjusha Ravindranath, K. Candan, M. Sapino
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引用次数: 3

摘要

随着传感数据可用性的增加,推断观测中相关事件的存在正成为依赖此类数据源的应用程序中智能数据服务交付的关键任务。然而,当推断的事件很罕见时,现有的解决方案往往会失败,例如,当试图从脑电图(EEG)数据中推断癫痫事件时。在本文中,我们注意到多变量时间序列通常带有鲁棒的局部多变量时间特征,至少在理论上,这些特征可以帮助识别这些事件;然而,由于缺乏足够的数据来训练这些事件,使得神经结构无法识别和利用这些特征。为了应对这一挑战,我们提出了一种基于lstm的神经结构m2nn,其注意机制利用了先验提取的鲁棒多元时间特征,并将其作为副信息输入到神经网络中。特别是,通过在多个尺度上同时考虑时间序列的时间特征以及外部知识(包括已知的先验变量关系)来提取多变量时间特征。然后,我们证明了利用这些多尺度、多变量特征的单层LSTM具有双层注意力,在脑电图数据的罕见癫痫检测中具有显着的增益。此外,为了说明m2nn的更广泛的适用性(和可重复性),我们还在其他公开可用的罕见事件检测任务中对其进行了评估,例如制造中的异常检测。我们进一步表明,所提出的m2nn技术有利于解决更传统的推理问题,例如旅行时间预测,其中罕见的事故事件可能导致拥堵。
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M2NN: Rare Event Inference through Multi-variate Multi-scale Attention
With the increasing availability of sensory data, inferring the existence of relevant events in the observations is becoming a critical task for smart data service delivery in applications that rely on such data sources. Yet, existing solutions tend to fail when the events that are being inferred are rare, for instance when one attempts to infer seizure events in electroencephalogram (EEG) data. In this paper, we note that multi-variate time series often carry robust localized multi-variate temporal features that could, at least in theory, help identify these events; however, the lack of sufficient data to train for these events make it impossible for neural architectures to identify and make use of these features. To tackle this challenge, we propose an LSTM-based neural architecture, M2N N, with an attention mechanism that leverages robust multivariate temporal features that are extracted a priori and fed into the NN as a side information. In particular, multi-variate temporal features are extracted by simultaneously considering, at multiple scales, temporal characteristics of the time series along with external knowledge, including variate relationships that are known a priori. We then show that a single layer LSTM with dual-layer attention that leverages these multi-scale, multi-variate features provides significant gains in rare seizure detection on EEG data. In addition, in order to illustrate the broader applicability (and reproducibility) of M2N N, we also evaluate it in other publicly available rare event detection tasks, such as anomaly detection in manufacturing. We further show that the proposed M2N N technique is beneficial in tackling more traditional inference problems, such as travel-time prediction, where rare accident events can cause congestions.
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