SimpleTS: An Efficient and Universal Model Selection Framework for Time Series Forecasting

被引:8
|
作者
Yao, Yuanyuan [1 ]
Li, Dimeng [2 ]
Jie, Hailiang [1 ]
Chen, Lu [1 ]
Li, Tianyi [3 ]
Chen, Jie [1 ,2 ]
Wang, Jiaqi
Li, Feifei [2 ]
Gao, Yunjun [1 ]
机构
[1] Zhejiang Univ, Hangzhou, Peoples R China
[2] Alibaba Grp, Hangzhou, Peoples R China
[3] Aalborg Univ, Aalborg, Denmark
来源
PROCEEDINGS OF THE VLDB ENDOWMENT | 2023年 / 16卷 / 12期
关键词
TRAJECTORIES; COMPRESSION;
D O I
10.14778/3611540.3611561
中图分类号
TP [自动化技术、计算机技术];
学科分类号
0812 ;
摘要
Time series forecasting, that predicts events through a sequence of time, has received increasing attention in past decades. The diverse range of time series forecasting models presents a challenge for selecting the most suitable model for a given dataset. As such, the Alibaba Cloud database monitoring system must address the issue of selecting an optimal forecasting model for a single time series data. While several model selection frameworks, including AutoAI-TS, have been developed to predict a dataset, their effectiveness may be limited as they may not adapt well to all types of time series, resulting in reduced prediction accuracy. Alternatively, models such as AutoForecast, which train on individual data points, may offer better adaptability but are limited by longer training time required. In this paper, we introduce SimpleTS, a versatile framework for time series forecasting that exhibits high efficiency and accuracy across all types of time series data. When performing an online prediction task, SimpleTS first classifies input time series into one type, and then efficiently selects the most suitable prediction model for this type. To optimize performance, SimpleTS (i) clusters models with similar performance to improve the efficiency of classification; (ii) uses soft labeling and weighted representation learning to achieve higher classification accuracy for different time series types. Extensive experiments on 3 private datasets and 52 public datasets show that SimpleTS outperforms the state-of-the-art toolkits in terms of both training time and prediction accuracy.
引用
收藏
页码:3741 / 3753
页数:13
相关论文
共 50 条
  • [31] Insights into the appropriate level of disaggregation for efficient time series model forecasting
    Ramirez, Octavio
    Mullen, Jeff
    Collart, Alba J.
    JOURNAL OF APPLIED STATISTICS, 2014, 41 (10) : 2298 - 2311
  • [32] Towards an efficient machine learning model for financial time series forecasting
    Arun Kumar
    Tanya Chauhan
    Srinivasan Natesan
    Nhat Truong Pham
    Ngoc Duy Nguyen
    Chee Peng Lim
    Soft Computing, 2023, 27 : 11329 - 11339
  • [33] Efficient Financial Time Series Forecasting Model using DWT Decomposition
    Khandelwal, Ina
    Satija, Udit
    Adhikari, Ratnadip
    2015 IEEE INTERNATIONAL CONFERENCE ON ELECTRONICS, COMPUTING AND COMMUNICATION TECHNOLOGIES (CONECCT), 2015,
  • [34] A Framework for Imbalanced Time-Series Forecasting
    Silvestrin, Luis P.
    Pantiskas, Leonardos
    Hoogendoorn, Mark
    MACHINE LEARNING, OPTIMIZATION, AND DATA SCIENCE (LOD 2021), PT I, 2022, 13163 : 250 - 264
  • [35] DeepTrace: A Generic Framework for Time Series Forecasting
    Moudhgalya, Nithish B.
    Divi, Siddharth
    Ganesan, V. Adithya
    Sundar, S. Sharan
    Vijayaraghavan, Vineeth
    ADVANCES IN COMPUTATIONAL INTELLIGENCE, IWANN 2019, PT I, 2019, 11506 : 139 - 151
  • [36] Selection of time series forecasting model, using a combination of linguistic and numerical criteria
    Afanasieva, T.
    Sapunkov, A.
    2016 IEEE 10TH INTERNATIONAL CONFERENCE ON APPLICATION OF INFORMATION AND COMMUNICATION TECHNOLOGIES (AICT), 2016, : 341 - 345
  • [37] A deterministic model selection scheme for incremental RBFNN construction in time series forecasting
    Florido, J. P.
    Pomares, H.
    Rojas, I.
    Urquiza, J. M.
    Lopez-Gordo, M. A.
    NEURAL COMPUTING & APPLICATIONS, 2012, 21 (03): : 595 - 610
  • [38] A deterministic model selection scheme for incremental RBFNN construction in time series forecasting
    J. P. Florido
    H. Pomares
    I. Rojas
    J. M. Urquiza
    M. A. Lopez-Gordo
    Neural Computing and Applications, 2012, 21 : 595 - 610
  • [39] Evolutionary Regressor Selection in ARIMA Model for Stock Price Time Series Forecasting
    Stoean, Ruxandra
    Stoean, Catalin
    Sandita, Adrian
    INTELLIGENT DECISION TECHNOLOGIES 2017, KES-IDT 2017, PT II, 2018, 73 : 117 - 126
  • [40] Time series forecasting with model selection applied to anomaly detection in network traffic
    Saganowski, Lukasz
    Andrysiak, Tomasz
    LOGIC JOURNAL OF THE IGPL, 2020, 28 (04) : 531 - 545