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Main Authors: Liang, Chen, Yang, Donghua, Liang, Zhiyu, Wang, Hongzhi, Liang, Zheng, Zhang, Xiyang, Huang, Jianfeng
Format: Preprint
Published: 2023
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Online Access:https://arxiv.org/abs/2312.05698
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author Liang, Chen
Yang, Donghua
Liang, Zhiyu
Wang, Hongzhi
Liang, Zheng
Zhang, Xiyang
Huang, Jianfeng
author_facet Liang, Chen
Yang, Donghua
Liang, Zhiyu
Wang, Hongzhi
Liang, Zheng
Zhang, Xiyang
Huang, Jianfeng
contents In recent times, the field of unsupervised representation learning (URL) for time series data has garnered significant interest due to its remarkable adaptability across diverse downstream applications. Unsupervised learning goals differ from downstream tasks, making it tricky to ensure downstream task utility by focusing only on temporal feature characterization. Researchers have proposed multiple transformations to extract discriminative patterns implied in informative time series, trying to fill the gap. Despite the introduction of a variety of feature engineering techniques, e.g. spectral domain, wavelet transformed features, features in image form and symbolic features etc. the utilization of intricate feature fusion methods and dependence on heterogeneous features during inference hampers the scalability of the solutions. To address this, our study introduces an innovative approach that focuses on aligning and binding time series representations encoded from different modalities, inspired by spectral graph theory, thereby guiding the neural encoder to uncover latent pattern associations among these multi-modal features. In contrast to conventional methods that fuse features from multiple modalities, our proposed approach simplifies the neural architecture by retaining a single time series encoder, consequently leading to preserved scalability. We further demonstrate and prove mechanisms for the encoder to maintain better inductive bias. In our experimental evaluation, we validated the proposed method on a diverse set of time series datasets from various domains. Our approach outperforms existing state-of-the-art URL methods across diverse downstream tasks.
format Preprint
id arxiv_https___arxiv_org_abs_2312_05698
institution arXiv
publishDate 2023
record_format arxiv
spellingShingle Unsupervised Multi-modal Feature Alignment for Time Series Representation Learning
Liang, Chen
Yang, Donghua
Liang, Zhiyu
Wang, Hongzhi
Liang, Zheng
Zhang, Xiyang
Huang, Jianfeng
Machine Learning
In recent times, the field of unsupervised representation learning (URL) for time series data has garnered significant interest due to its remarkable adaptability across diverse downstream applications. Unsupervised learning goals differ from downstream tasks, making it tricky to ensure downstream task utility by focusing only on temporal feature characterization. Researchers have proposed multiple transformations to extract discriminative patterns implied in informative time series, trying to fill the gap. Despite the introduction of a variety of feature engineering techniques, e.g. spectral domain, wavelet transformed features, features in image form and symbolic features etc. the utilization of intricate feature fusion methods and dependence on heterogeneous features during inference hampers the scalability of the solutions. To address this, our study introduces an innovative approach that focuses on aligning and binding time series representations encoded from different modalities, inspired by spectral graph theory, thereby guiding the neural encoder to uncover latent pattern associations among these multi-modal features. In contrast to conventional methods that fuse features from multiple modalities, our proposed approach simplifies the neural architecture by retaining a single time series encoder, consequently leading to preserved scalability. We further demonstrate and prove mechanisms for the encoder to maintain better inductive bias. In our experimental evaluation, we validated the proposed method on a diverse set of time series datasets from various domains. Our approach outperforms existing state-of-the-art URL methods across diverse downstream tasks.
title Unsupervised Multi-modal Feature Alignment for Time Series Representation Learning
topic Machine Learning
url https://arxiv.org/abs/2312.05698