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Learning from Irregularly-Sampled Time Series: A Missing Data Perspective

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Irregularly-sampled time series occur in many domains including healthcare. They can be challenging to model because they do not naturally yield a fixed-dimensional representation as required by many standard machine learning models. In this paper, we consider irregular sampling from the perspective of missing data. We model observed irregularly-sampled time series data as a sequence of index-value pairs sampled from a continuous but unobserved function. We introduce an encoder-decoder framework for learning from such generic indexed sequences. We propose learning methods for this framework based on variational autoencoders and generative adversarial networks. For continuous irregularly-sampled time series, we introduce continuous convolutional layers that can efficiently interface with existing neural network architectures. Experiments show that our models are able to achieve competitive or better classification results on irregularly-sampled multivariate time series compared to recent RNN models while offering significantly faster training times.

Steven Cheng-Xian Li, Benjamin M. Marlin• 2020

Related benchmarks

TaskDatasetResultRank
Lung cancer risk estimationNLST MCAR mechanism (30% factors missing, 50% TP1 images missing) (test (791 subjects))
AUC0.8844
35
Lung cancer risk estimationExternal In-house Set MNAR mechanism (test (404 subjects))
AUC0.8488
24
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