A General Framework for Uncertainty Quantification via Neural SDE-RNN
About
Uncertainty quantification is a critical yet unsolved challenge for deep learning, especially for the time series imputation with irregularly sampled measurements. To tackle this problem, we propose a novel framework based on the principles of recurrent neural networks and neural stochastic differential equations for reconciling irregularly sampled measurements. We impute measurements at any arbitrary timescale and quantify the uncertainty in the imputations in a principled manner. Specifically, we derive analytical expressions for quantifying and propagating the epistemic and aleatoric uncertainty across time instants. Our experiments on the IEEE 37 bus test distribution system reveal that our framework can outperform state-of-the-art uncertainty quantification approaches for time-series data imputations.
Related benchmarks
| Task | Dataset | Result | Rank | |
|---|---|---|---|---|
| Multivariate Time Series Classification | UEA 30% missing rate (test) | Accuracy46.4 | 39 | |
| Classification | UCR ProximalPhalanxTW | Accuracy78.1 | 10 | |
| Classification | UCR MiddlePhalanxOutlineAgeGroup | Accuracy60.4 | 10 | |
| Classification | UCR ProximalPhalanxOutlineCorrect | Accuracy70.8 | 10 | |
| Classification | UCR ProximalPhalanxOutlineAgeGroup | Accuracy84.8 | 10 | |
| Classification | UCR MoteStrain | Accuracy75.8 | 10 | |
| Classification | UCR SonyAIBORobotSurface2 | Accuracy0.697 | 10 | |
| Classification | UCR Earthquakes | Accuracy57.2 | 10 | |
| Multivariate Time Series Classification | UEA 60% missing rate (test) | Accuracy38.7 | 5 | |
| Classification | UCR TwoPatterns | Accuracy54.5 | 5 |