Universal representation learning for multivariate time series using the instance-level and cluster-level supervised contrastive learning

被引:0
|
作者
Moradinasab, Nazanin [1 ]
Sharma, Suchetha [2 ]
Bar-Yoseph, Ronen [3 ,4 ]
Radom-Aizik, Shlomit [3 ]
Bilchick, Kenneth C. [5 ]
Cooper, Dan M. [3 ,6 ]
Weltman, Arthur [7 ,8 ]
Brown, Donald E. [1 ,2 ]
机构
[1] Univ Virginia, Dept Engn Syst & Environm, Charlottesville, VA 22904 USA
[2] Univ Virginia, Sch Data Sci, Charlottesville, VA 22904 USA
[3] Univ Calif Irvine, Pediat Exercise & Genom Res Ctr, Irvine, CA 92697 USA
[4] Ruth Rappaport Childrens Hosp, Pediat Pulm Inst, Rambam Hlth Care Campus, IL-3109601 Haifa, Israel
[5] Univ Virginia Hlth Syst, Dept Med, Cardiovasc Div, Charlottesville, VA 22903 USA
[6] Univ Calif Irvine, Inst Clin & Translat Sci, Irvine, CA 92697 USA
[7] Univ Virginia, Dept Kinesiol, Charlottesville, VA 22903 USA
[8] Univ Virginia, Dept Med, Div Endocrinol & Metab, Charlottesville, VA 22903 USA
基金
美国国家卫生研究院;
关键词
Multivariate time series data; Contrastive learning; Classification; Interpretability;
D O I
10.1007/s10618-024-01006-1
中图分类号
TP18 [人工智能理论];
学科分类号
081104 ; 0812 ; 0835 ; 1405 ;
摘要
The multivariate time series classification (MTSC) task aims to predict a class label for a given time series. Recently, modern deep learning-based approaches have achieved promising performance over traditional methods for MTSC tasks. The success of these approaches relies on access to the massive amount of labeled data (i.e., annotating or assigning tags to each sample that shows its corresponding category). However, obtaining a massive amount of labeled data is usually very time-consuming and expensive in many real-world applications such as medicine, because it requires domain experts' knowledge to annotate data. Insufficient labeled data prevents these models from learning discriminative features, resulting in poor margins that reduce generalization performance. To address this challenge, we propose a novel approach: supervised contrastive learning for time series classification (SupCon-TSC). This approach improves the classification performance by learning the discriminative low-dimensional representations of multivariate time series, and its end-to-end structure allows for interpretable outcomes. It is based on supervised contrastive (SupCon) loss to learn the inherent structure of multivariate time series. First, two separate augmentation families, including strong and weak augmentation methods, are utilized to generate augmented data for the source and target networks, respectively. Second, we propose the instance-level, and cluster-level SupCon learning approaches to capture contextual information to learn the discriminative and universal representation for multivariate time series datasets. In the instance-level SupCon learning approach, for each given anchor instance that comes from the source network, the low-variance output encodings from the target network are sampled as positive and negative instances based on their labels. However, the cluster-level approach is performed between each instance and cluster centers among batches, as opposed to the instance-level approach. The cluster-level SupCon loss attempts to maximize the similarities between each instance and cluster centers among batches. We tested this novel approach on two small cardiopulmonary exercise testing (CPET) datasets and the real-world UEA Multivariate time series archive. The results of the SupCon-TSC model on CPET datasets indicate its capability to learn more discriminative features than existing approaches in situations where the size of the dataset is small. Moreover, the results on the UEA archive show that training a classifier on top of the universal representation features learned by our proposed method outperforms the state-of-the-art approaches.
引用
收藏
页码:1493 / 1519
页数:27
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