Uncertainty-Aware Attention for Reliable Interpretation and Prediction

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Attention mechanism is effective in both focusing the deep learning models on relevant features and interpreting them. However, attentions may be unreliable since the networks that generate them are often trained in a weakly-supervised manner. To overcome this limitation, we introduce the notion of input-dependent uncertainty to the attention mechanism, such that it generates attention for each feature with varying degrees of noise based on the given input, to learn larger variance on instances it is uncertain about. We learn this Uncertainty-aware Attention (UA) mechanism using variational inference, and validate it on various risk prediction tasks from electronic health records on which our model significantly outperforms existing attention models. The analysis of the learned attentions shows that our model generates attentions that comply with clinicians' interpretation, and provide richer interpretation via learned variance. Further evaluation of both the accuracy of the uncertainty calibration and the prediction performance with “I don't know” decision show that UA yields networks with high reliability as well. © 2018 Curran Associates Inc..All rights reserved.
Publisher
Neural information processing systems foundation
Issue Date
2018-12-04
Language
English
Citation

32nd Conference on Neural Information Processing Systems, NeurIPS 2018, pp.909 - 918

URI
http://hdl.handle.net/10203/249215
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RIMS Conference Papers
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