Evaluate Pseudo Labeling and CNN for Multi-variate Time Series Classification in Low-Data Regimes

被引:3
|
作者
Ienco, Dino [1 ]
Pereira-Santos, Davi [2 ]
de Carvalho, Andre C. P. L. F. [2 ]
机构
[1] Univ Montpellier, UMR TETIS, INRAE, Montpellier, France
[2] ICMC, Sao Carlos, Brazil
关键词
D O I
10.1007/978-3-030-86383-8_10
中图分类号
TP18 [人工智能理论];
学科分类号
081104 ; 0812 ; 0835 ; 1405 ;
摘要
Nowadays, huge amount of data are being produced by a large and diverse family of sensors (e.g., remote sensors, biochemical sensors, wearable devices). These sensors typically measure multiple variables over time, resulting in data streams that can be profitably organized as multivariate time-series. In practical scenarios, the speed at which such information is collected often makes the data labeling a difficult task. This results in a low-data regime scenario where only a small set of labeled samples is available and standard supervised learning algorithms cannot be employed. To cope with the task of multi-variate time series classification in low-data regime scenarios, here, we propose a framework that combines convolutional neural networks (CNNs) with self-training (pseudo labeling) in a transductive setting (test data are already available at training time). Our framework, named ResNetIPL, wraps a CNN based classifier into an iterative procedure that, at each step, enlarges the training set with new samples and their associated pseudo labels. An experimental evaluation on several benchmarks, coming from different domains, has demonstrated the value of the proposed approach and, more generally, the ability of the deep learning approaches to effectively deal with scenarios characterized by low-data regimes.
引用
收藏
页码:126 / 137
页数:12
相关论文
共 50 条
  • [31] A Heatmap-Based Time-Varying Multi-Variate Data Visualization Unifying Numeric and Categorical Variables
    Suematsu, Haruka
    Yagi, Sayaka
    Itoh, Takayuki
    Motohashi, Yosuke
    Aoki, Kenji
    Morinaga, Satoshi
    2014 18TH INTERNATIONAL CONFERENCE ON INFORMATION VISUALISATION (IV), 2014, : 84 - 87
  • [32] Novelty Prediction in Broadband Line Multi-variate Time Series Using a Deep Long Short-Term Memory Network
    Wang, Jinling
    Scotney, Bryan
    Zhang, Shuai
    Carracedo, Jorge Martinez
    Yearling, Dave
    INTERNATIONAL CONFERENCE ON ELECTRICAL, COMPUTER AND ENERGY TECHNOLOGIES (ICECET 2021), 2021, : 2211 - 2216
  • [33] Unsupervised Classification of Multivariate Time Series Data for the Identification of Sea Regimes
    Bencivenga, Mauro
    Lagona, Francesco
    Maruotti, Antonello
    Nardone, Gabriele
    Picone, Marco
    TOPICS IN THEORETICAL AND APPLIED STATISTICS, 2016, : 61 - 71
  • [34] Enhanced Multi-variate Time Series Prediction Through Statistical-Deep Learning Integration: The VAR-Stacked LSTM Model
    Sakib M.
    Mustajab S.
    SN Computer Science, 5 (5)
  • [35] CatSight, a direct path to proper multi-variate time series change detection: perceiving a concept drift through common spatial pattern
    Florez, Arantzazu
    Rodriguez-Moreno, Itsaso
    Artetxe, Arkaitz
    Olaizola, Igor Garcia
    Sierra, Basilio
    INTERNATIONAL JOURNAL OF MACHINE LEARNING AND CYBERNETICS, 2023, 14 (09) : 2925 - 2944
  • [36] CatSight, a direct path to proper multi-variate time series change detection: perceiving a concept drift through common spatial pattern
    Arantzazu Flórez
    Itsaso Rodríguez-Moreno
    Arkaitz Artetxe
    Igor García Olaizola
    Basilio Sierra
    International Journal of Machine Learning and Cybernetics, 2023, 14 : 2925 - 2944
  • [37] VTNet: A multi-domain information fusion model for long-term multi-variate time series forecasting with application in irrigation water level
    Dai, Rui
    Wang, Zheng
    Wang, Wanliang
    Jie, Jing
    Chen, Jiacheng
    Ye, Qianlin
    APPLIED SOFT COMPUTING, 2024, 167
  • [38] Online Discovery and Classification of Operational Regimes From an Ensemble of Time Series Data
    Bhattacharya, Chandrachur
    Ray, Asok
    JOURNAL OF DYNAMIC SYSTEMS MEASUREMENT AND CONTROL-TRANSACTIONS OF THE ASME, 2020, 142 (11):
  • [39] Unveiling the Multi-Dimensional Spatio-Temporal Fusion Transformer (MDSTFT): A Revolutionary Deep Learning Framework for Enhanced Multi-Variate Time Series Forecasting
    Wang, Shuhan
    Lin, Yunling
    Jia, Yunxi
    Sun, Jianing
    Yang, Ziqi
    IEEE ACCESS, 2024, 12 : 115895 - 115904
  • [40] Accurate Multi-Scale Feature Fusion CNN for Time Series Classification in Smart Factory
    Shao, Xiaorui
    Kim, Chang Soo
    Kim, Dae Geun
    CMC-COMPUTERS MATERIALS & CONTINUA, 2020, 65 (01): : 543 - 561