Estimating Missing Data in Temporal Data Streams Using Multi-directional Recurrent Neural Networks
November 23, 2017 ยท Declared Dead ยท ๐ IEEE Transactions on Biomedical Engineering
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Authors
Jinsung Yoon, William R. Zame, Mihaela van der Schaar
arXiv ID
1711.08742
Category
cs.LG: Machine Learning
Citations
302
Venue
IEEE Transactions on Biomedical Engineering
Last Checked
3 months ago
Abstract
Missing data is a ubiquitous problem. It is especially challenging in medical settings because many streams of measurements are collected at different - and often irregular - times. Accurate estimation of those missing measurements is critical for many reasons, including diagnosis, prognosis and treatment. Existing methods address this estimation problem by interpolating within data streams or imputing across data streams (both of which ignore important information) or ignoring the temporal aspect of the data and imposing strong assumptions about the nature of the data-generating process and/or the pattern of missing data (both of which are especially problematic for medical data). We propose a new approach, based on a novel deep learning architecture that we call a Multi-directional Recurrent Neural Network (M-RNN) that interpolates within data streams and imputes across data streams. We demonstrate the power of our approach by applying it to five real-world medical datasets. We show that it provides dramatically improved estimation of missing measurements in comparison to 11 state-of-the-art benchmarks (including Spline and Cubic Interpolations, MICE, MissForest, matrix completion and several RNN methods); typical improvements in Root Mean Square Error are between 35% - 50%. Additional experiments based on the same five datasets demonstrate that the improvements provided by our method are extremely robust.
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