Quantifying Uncertainty in Discrete-Continuous and Skewed Data with Bayesian Deep Learning

02/13/2018
by   Thomas Vandal, et al.
0

Deep Learning (DL) methods have been transforming computer vision with innovative adaptations to other domains including climate change. For DL to pervade Science and Engineering (S&E) applications where risk management is a core component, well-characterized uncertainty estimates must accompany predictions. However, S&E observations and model-simulations often follow heavily skewed distributions and are not well modeled with DL approaches, since they usually optimize a Gaussian, or Euclidean, likelihood loss. Recent developments in Bayesian Deep Learning (BDL), which attempts to capture uncertainties from noisy observations, aleatoric, and from unknown model parameters, epistemic, provide us a foundation. Here we present a discrete-continuous BDL model with Gaussian and lognormal likelihoods for uncertainty quantification (UQ). We demonstrate the approach by developing UQ estimates on "DeepSD", a super-resolution based DL model for Statistical Downscaling (SD) in climate applied to precipitation, which follows an extremely skewed distribution. We find that the discrete-continuous models outperform a basic Gaussian distribution in terms of predictive accuracy and uncertainty calibration. Furthermore, we find that the lognormal distribution, which can handle skewed distributions, produces quality uncertainty estimates at the extremes. Such results may be important across S&E, as well as other domains such as finance and economics, where extremes are often of significant interest. Furthermore, to our knowledge, this is the first UQ model in SD where both aleatoric and epistemic uncertainties are characterized.

READ FULL TEXT

page 2

page 8

research
03/15/2017

What Uncertainties Do We Need in Bayesian Deep Learning for Computer Vision?

There are two major types of uncertainty one can model. Aleatoric uncert...
research
06/05/2023

Quantification of Uncertainties in Deep Learning-based Environment Perception

In this work, we introduce a novel Deep Learning-based method to perceiv...
research
05/20/2022

The Unreasonable Effectiveness of Deep Evidential Regression

There is a significant need for principled uncertainty reasoning in mach...
research
01/07/2022

Explainable deep learning for insights in El Nino and river flows

The El Nino Southern Oscillation (ENSO) is a semi-periodic fluctuation i...
research
06/19/2023

Evaluating Loss Functions and Learning Data Pre-Processing for Climate Downscaling Deep Learning Models

Deep learning models have gained popularity in climate science, followin...
research
07/06/2022

Addressing Detection Limits with Semiparametric Cumulative Probability Models

Detection limits (DLs), where a variable is unable to be measured outsid...

Please sign up or login with your details

Forgot password? Click here to reset