BRITS: Bidirectional Recurrent Imputation for Time Series
–Neural Information Processing Systems
Time series are widely used as signals in many classification/regression tasks. It is ubiquitous that time series contains many missing values. Given multiple correlated time series data, how to fill in missing values and to predict their class labels? Existing imputation methods often impose strong assumptions of the underlying data generating process, such as linear dynamics in the state space. In this paper, we propose BRITS, a novel method based on recurrent neural networks for missing value imputation in time series data.
Neural Information Processing Systems
Mar-16-2026, 21:57:30 GMT