Continual Learning for Multivariate Time Series Tasks with Variable Input Dimensions

Vibhor Gupta, Jyoti Narwariya, Pankaj Malhotra, L. Vig, Gautam M. Shroff
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引用次数: 10

Abstract

We consider a sequence of related multivariate time series learning tasks, such as predicting failures for different instances of a machine from time series of multi-sensor data, or activity recognition tasks over different individuals from multiple wearable sensors. We focus on two under-explored practical challenges arising in such settings: (i) Each task may have a different subset of sensors, i.e., providing different partial observations of the underlying ‘system’. This restriction can be due to different manufacturers in the former case, and people wearing more or less measurement devices in the latter (ii) We are not allowed to store or re-access data from a task once it has been observed at the task level. This may be due to privacy considerations in the case of people, or legal restrictions placed by machine owners. Nevertheless, we would like to (a) improve performance on subsequent tasks using experience from completed tasks as well as (b) continue to perform better on past tasks, e.g., update the model and improve predictions on even the first machine after learning from subsequently observed ones. We note that existing continual learning methods do not take into account variability in input dimensions arising due to different subsets of sensors being available across tasks, and struggle to adapt to such variable input dimensions (VID) tasks. In this work, we address this shortcoming of existing methods. To this end, we learn task-specific generative models and classifiers, and use these to augment data for target tasks. Since the input dimensions across tasks vary, we propose a novel conditioning module based on graph neural networks to aid a standard recurrent neural network. We evaluate the efficacy of the proposed approach on three publicly available datasets corresponding to two activity recognition tasks (classification) and one prognostics task (regression). We demonstrate that it is possible to significantly enhance the performance on future and previous tasks while learning continuously from VID tasks without storing data.
具有可变输入维数的多元时间序列任务的持续学习
我们考虑一系列相关的多元时间序列学习任务,例如从多传感器数据的时间序列中预测机器不同实例的故障,或者从多个可穿戴传感器中对不同个体进行活动识别任务。我们重点关注在这种情况下出现的两个未被充分探索的实际挑战:(i)每个任务可能有不同的传感器子集,即提供对底层“系统”的不同部分观察。在前一种情况下,这种限制可能是由于不同的制造商,而在后一种情况下,人们佩戴或多或少的测量设备(ii)一旦在任务级别观察到数据,我们就不允许存储或重新访问任务中的数据。这可能是由于人的隐私考虑,或者是机器所有者的法律限制。然而,我们希望(a)利用已完成任务的经验来提高后续任务的性能,以及(b)在过去的任务中继续表现得更好,例如,在从随后观察到的机器中学习后更新模型并改进对第一台机器的预测。我们注意到,现有的持续学习方法没有考虑到由于不同任务中可用的不同传感器子集而引起的输入维度的可变性,并且难以适应这种可变输入维度(VID)任务。在这项工作中,我们解决了现有方法的这一缺点。为此,我们学习特定于任务的生成模型和分类器,并使用它们来增加目标任务的数据。由于不同任务的输入维度不同,我们提出了一种新的基于图神经网络的条件反射模块来辅助标准的递归神经网络。我们评估了所提出的方法在三个公开可用数据集上的有效性,这些数据集对应于两个活动识别任务(分类)和一个预后任务(回归)。我们证明,在不存储数据的情况下,从VID任务中不断学习,可以显著提高未来和以前任务的性能。
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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