Frequentist Uncertainty in Recurrent Neural Networks via Blockwise Influence Functions

06/20/2020
by   Ahmed M. Alaa, et al.
4

Recurrent neural networks (RNNs) are instrumental in modelling sequential and time-series data. Yet, when using RNNs to inform decision-making, predictions by themselves are not sufficient; we also need estimates of predictive uncertainty. Existing approaches for uncertainty quantification in RNNs are based predominantly on Bayesian methods; these are computationally prohibitive, and require major alterations to the RNN architecture and training. Capitalizing on ideas from classical jackknife resampling, we develop a frequentist alternative that: (a) does not interfere with model training or compromise its accuracy, (b) applies to any RNN architecture, and (c) provides theoretical coverage guarantees on the estimated uncertainty intervals. Our method derives predictive uncertainty from the variability of the (jackknife) sampling distribution of the RNN outputs, which is estimated by repeatedly deleting blocks of (temporally-correlated) training data, and collecting the predictions of the RNN re-trained on the remaining data. To avoid exhaustive re-training, we utilize influence functions to estimate the effect of removing training data blocks on the learned RNN parameters. Using data from a critical care setting, we demonstrate the utility of uncertainty quantification in sequential decision-making.

READ FULL TEXT
research
06/01/2023

A General Framework for Uncertainty Quantification via Neural SDE-RNN

Uncertainty quantification is a critical yet unsolved challenge for deep...
research
11/24/2020

Uncertainty Estimation and Calibration with Finite-State Probabilistic RNNs

Uncertainty quantification is crucial for building reliable and trustabl...
research
08/03/2023

Quantification of Predictive Uncertainty via Inference-Time Sampling

Predictive variability due to data ambiguities has typically been addres...
research
07/28/2020

Improving Recurrent Neural Network Responsiveness to Acute Clinical Events

Predictive models in acute care settings must be able to immediately rec...
research
06/17/2022

Towards Data Assimilation in Level-Set Wildfire Models Using Bayesian Filtering

The level-set method is a prominent approach to modelling the evolution ...
research
11/26/2019

An Optimized and Energy-Efficient Parallel Implementation of Non-Iteratively Trained Recurrent Neural Networks

Recurrent neural networks (RNN) have been successfully applied to variou...
research
02/10/2023

Satellite Anomaly Detection Using Variance Based Genetic Ensemble of Neural Networks

In this paper, we use a variance-based genetic ensemble (VGE) of Neural ...

Please sign up or login with your details

Forgot password? Click here to reset