4.6 Article

End-to-End Incomplete Time-Series Modeling From Linear Memory of Latent Variables

Journal

IEEE TRANSACTIONS ON CYBERNETICS
Volume 50, Issue 12, Pages 4908-4920

Publisher

IEEE-INST ELECTRICAL ELECTRONICS ENGINEERS INC
DOI: 10.1109/TCYB.2019.2906426

Keywords

Missing values; recurrent neural networks (RNNs); temporal dependency; time-series imputation

Funding

  1. National Natural Science Foundation of China [61502174, 61872148, 61722205, 61751205, 61572199, 61751202]
  2. Natural Science Foundation of Guangdong Province [2017A030313355, 2017A030313358]
  3. Guangdong Province Higher Vocational Colleges and Schools Pearl River Scholar Funded Scheme (2018)
  4. Key Research and Development Program of Guangdong Province [2018B010107002]
  5. Guangzhou Science and Technology Planning Project [201704030051]
  6. Opening Project of Guangdong Province Key Laboratory of Big Data Analysis and Processing [2017014]
  7. Guangdong University of Finance and Economics Big Data and Educational Statistics Application Laboratory [2017WSYS001]
  8. National Science Foundation, USA [SMA 1041755]

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Time series with missing values (incomplete time series) are ubiquitous in real life on account of noise or malfunctioning sensors. Time-series imputation (replacing missing data) remains a challenge due to the potential for nonlinear dependence on concurrent and previous values of the time series. In this paper, we propose a novel framework for modeling incomplete time series, called a linear memory vector recurrent neural network (LIME-RNN), a recurrent neural network (RNN) with a learned linear combination of previous history states. The technique bears some similarity to residual networks and graph-based temporal dependency imputation. In particular, we introduce a linear memory vector [called the residual sum vector (RSV)] that integrates over previous hidden states of the RNN, and is used to fill in missing values. A new loss function is developed to train our model with time series in the presence of missing values in an end-to-end way. Our framework can handle imputation of both missing-at-random and consecutive missing inputs. Moreover, when conducting time-series prediction with missing values, LIME-RNN allows imputation and prediction simultaneously. We demonstrate the efficacy of the model via extensive experimental evaluation on univariate and multivariate time series, achieving state-of-the-art performance on synthetic and real-world data. The statistical results show that our model is significantly better than most existing time-series univariate or multivariate imputation methods.

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