通过层次稀疏卷积掩码自动编码器进行基于自监督学习的时间序列分类

IF 2.9 Q2 ENGINEERING, ELECTRICAL & ELECTRONIC IEEE open journal of signal processing Pub Date : 2024-07-30 DOI:10.1109/OJSP.2024.3435673
Ting Yu;Kele Xu;Xu Wang;Bo Ding;Dawei Feng
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引用次数: 0

摘要

近年来,时间序列分析的应用越来越广泛,促使研究人员探索改进分类的方法。时间序列自监督学习已成为一个重要的研究领域,其目的是从无标签数据中发现模式,从而获得更丰富的信息。尤其是对比式自我监督学习,在时间序列分类方面受到了广泛关注。然而,这种方法会产生正负样本,从而带来归纳偏差。另一种方法是掩码自动编码器(MAE),它对各种数据类型都很有效。但是,由于它们依赖于变换器架构,因此在预训练阶段需要大量的计算资源。最近,受卷积网络在时间序列预测领域取得的显著进步的启发,我们希望利用掩码恢复策略来使用卷积网络,对时间序列模型进行预训练。本研究引入了一种名为 "HSC-MAE "的分层稀疏卷积掩码自动编码器(Hierarchical Sparse Convolutional Masked-Autoencoder)的新型模型,它将卷积操作与 MAE 架构无缝集成,能有效捕捉不同尺度的时间序列特征。此外,HSC-MAE 模型还集成了专门的解码器,可综合全局和局部信息,增强其理解复杂时间模式的能力。为了评估所提出方法的有效性,我们在九个不同的数据集上进行了大量实验。实验结果证明了 HSC-MAE 在有效缓解上述挑战方面的功效。
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Self-Supervised Learning-Based Time Series Classification via Hierarchical Sparse Convolutional Masked-Autoencoder
In recent years, the use of time series analysis has become widespread, prompting researchers to explore methods to improve classification. Time series self-supervised learning has emerged as a significant area of study, aiming to uncover patterns in unlabeled data for richer information. Contrastive self-supervised learning, particularly, has gained attention for time series classification. However, it introduces inductive bias by generating positive and negative samples. Another approach involves Masked Autoencoders (MAE), which are effective for various data types. However, due to their reliance on the Transformer architecture, they demand significant computational resources during the pre-training phase. Recently, inspired by the remarkable advancements achieved by convolutional networks in the domain of time series forecasting, we aspire to employ convolutional networks utilizing a strategy of mask recovery for pre-training time series models. This study introduces a novel model termed Hierarchical Sparse Convolutional Masked-Autoencoder, “HSC-MAE”, which seamlessly integrates convolutional operations with the MAE architecture to adeptly capture time series features across varying scales. Furthermore, the HSC-MAE model incorporates dedicated decoders that amalgamate global and local information, enhancing its capacity to comprehend intricate temporal patterns. To gauge the effectiveness of the proposed approach, an extensive array of experiments was conducted across nine distinct datasets. The experimental outcomes stand as a testament to the efficacy of HSC-MAE in effectively mitigating the aforementioned challenges.
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CiteScore
5.30
自引率
0.00%
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审稿时长
22 weeks
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