RECURSIVE INPUT AND STATE ESTIMATION: A GENERAL FRAMEWORK FOR LEARNING FROM TIME SERIES WITH MISSING DATA

被引:2
|
作者
Garcia-Duran, Alberto [1 ]
West, Robert [1 ]
机构
[1] Ecole Polytech Fed Lausanne EPFL, Lausanne, Switzerland
关键词
Time Series; Missing Data; Data Imputation; Representation Learning;
D O I
10.1109/ICASSP39728.2021.9414801
中图分类号
O42 [声学];
学科分类号
070206 ; 082403 ;
摘要
Time series with missing data are signals encountered in important settings for machine learning. Some of the most successful prior approaches for modeling such time series are based on recurrent neural networks that transform the input and previous state to account for the missing observations, and then treat the transformed signal in a standard manner. In this paper, we introduce a single unifying framework, Recursive Input and State Estimation (RISE), for this general approach and reformulate existing models as specific instances of this framework. We then explore additional novel variations within the RISE framework to improve the performance of any instance. We exploit representation learning techniques to learn latent representations of the signals used by RISE instances. We discuss and develop various encoding techniques to learn latent signal representations. We benchmark instances of the framework with various encoding functions on three data imputation datasets, observing that RISE instances always benefit from encoders that learn representations for numerical values from the digits into which they can be decomposed.
引用
收藏
页码:3535 / 3539
页数:5
相关论文
共 50 条
  • [21] ROBUST RECURSIVE ESTIMATION FOR FINANCIAL TIME SERIES
    Hendrych, Radek
    Cipra, Tomas
    12TH INTERNATIONAL DAYS OF STATISTICS AND ECONOMICS, 2018, : 563 - 571
  • [22] Joint estimation of transfer learning on time series data
    Lou, Dan
    Yang, Yuehan
    STATISTICAL PAPERS, 2025, 66 (01)
  • [23] A Recursive Approach for Estimating Missing Observations in an Univariate Time Series
    Nieto, F. H.
    Martinez, J.
    Communications in Statistics. Part A: Theory and Methods, 25 (09):
  • [24] Online Learning for Time Series Prediction of AR Model with Missing Data
    Yang, Haimin
    Pan, Zhisong
    Tao, Qing
    NEURAL PROCESSING LETTERS, 2019, 50 (03) : 2247 - 2263
  • [25] Online Learning for Time Series Prediction of AR Model with Missing Data
    Haimin Yang
    Zhisong Pan
    Qing Tao
    Neural Processing Letters, 2019, 50 : 2247 - 2263
  • [26] A general framework for learning rules from data
    Apolloni, B
    Esposito, A
    Malchiodi, D
    Orovas, C
    Palmas, G
    Taylor, JG
    IEEE TRANSACTIONS ON NEURAL NETWORKS, 2004, 15 (06): : 1333 - 1349
  • [27] Recursive Least Square: RLS Method-Based Time Series Data Prediction for Many Missing Data
    Arai, Kohei
    Seto, Kaname
    INTERNATIONAL JOURNAL OF ADVANCED COMPUTER SCIENCE AND APPLICATIONS, 2020, 11 (11) : 66 - 72
  • [29] A Wind Power Forecasting Model Incorporating Recursive Bayesian Filtering State Estimation and Time-Series Data Mining
    Liu, Peng
    Zhang, Tieyan
    Tian, Furui
    Teng, Yun
    Gu, Chuang
    TEHNICKI VJESNIK-TECHNICAL GAZETTE, 2024, 31 (05): : 1485 - 1493
  • [30] THE ESTIMATION OF MISSING OBSERVATIONS IN RELATED TIME-SERIES DATA - FURTHER RESULTS
    BROWN, KC
    KADIYALA, KR
    COMMUNICATIONS IN STATISTICS-SIMULATION AND COMPUTATION, 1985, 14 (04) : 973 - 981