多维时间数据的多视角注意力网络

Ye Yuan, Guangxu Xun, Fenglong Ma, Yaqing Wang, Nan Du, Ke-bin Jia, Lu Su, Aidong Zhang
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引用次数: 53

摘要

注意力网络的最新进展引起了人们对时间序列数据挖掘的极大兴趣。提出了多种注意机制,通过分配可学习的注意分数,从时间数据中软选择相关的时间戳。然而,许多现实世界的任务涉及复杂的多元时间序列,从多个角度连续测量目标。不同视图可以提供信息的不同级别的质量变化随着时间的推移,因此应该被分配不同的注意分数。遗憾的是,由于数据结构的复杂性,现有的基于注意力的体系结构不能直接用于时间域和视图域的注意力分数的联合学习。为此,我们提出了一种新的多视图注意力网络,即MuVAN,从多变量时间数据中学习细粒度的注意力表征。MuVAN是一个统一的深度学习模型,可以联合计算二维注意力分数,以估计不同时间戳内每个视图贡献的信息质量。通过构建混合焦点过程,我们可以使注意力更加多样化,从而充分利用多视角信息。为了评估我们的模型的性能,我们在三个真实世界的基准数据集上进行了实验。实验结果表明,所提出的MuVAN模型在不同的现实世界任务中优于最先进的深度表示方法。通过一个案例研究的分析结果表明,MuVAN可以在不同的视图中发现有区别的和有意义的注意力分数,从而改善了多变量时间数据的特征表示。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
MuVAN: A Multi-view Attention Network for Multivariate Temporal Data
Recent advances in attention networks have gained enormous interest in time series data mining. Various attention mechanisms are proposed to soft-select relevant timestamps from temporal data by assigning learnable attention scores. However, many real-world tasks involve complex multivariate time series that continuously measure target from multiple views. Different views may provide information of different levels of quality varied over time, and thus should be assigned with different attention scores as well. Unfortunately, the existing attention-based architectures cannot be directly used to jointly learn the attention scores in both time and view domains, due to the data structure complexity. Towards this end, we propose a novel multi-view attention network, namely MuVAN, to learn fine-grained attentional representations from multivariate temporal data. MuVAN is a unified deep learning model that can jointly calculate the two-dimensional attention scores to estimate the quality of information contributed by each view within different timestamps. By constructing a hybrid focus procedure, we are able to bring more diversity to attention, in order to fully utilize the multi-view information. To evaluate the performance of our model, we carry out experiments on three real-world benchmark datasets. Experimental results show that the proposed MuVAN model outperforms the state-of-the-art deep representation approaches in different real-world tasks. Analytical results through a case study demonstrate that MuVAN can discover discriminative and meaningful attention scores across views over time, which improves the feature representation of multivariate temporal data.
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