Calibration of Deep Probabilistic Models with Decoupled Bayesian Neural Networks
Maroñas, Juan, Paredes, Roberto, Ramos, Daniel
Deep Neural Networks (DNNs) have achieved state-of-the-art accuracy performance in many tasks. However, recent works have pointed out that the outputs provided by these models are not well-calibrated, seriously limiting their use in critical decision scenarios. In this work, we propose to use a decoupled Bayesian stage, implemented with a Bayesian Neural Network (BNN), to map the uncalibrated probabilities provided by a DNN to calibrated ones, consistently improving calibration. Our results evidence that incorporating uncertainty provides more reliable probabilistic models, a critical condition for achieving good calibration. We report a generous collection of experimental results using high-accuracy DNNs in standardized image classification benchmarks, showing the good performance, flexibility and robust behavior of our approach with respect to several state-of-the-art calibration methods. Code for reproducibility is provided.
Sep-25-2019
- Country:
- Africa > South Africa (0.04)
- Oceania > Australia
- New South Wales > Sydney (0.04)
- North America
- United States
- New York > New York County
- New York City (0.14)
- California > San Francisco County
- San Francisco (0.14)
- New York > New York County
- Puerto Rico > San Juan
- San Juan (0.04)
- Canada > Ontario
- Toronto (0.04)
- United States
- Europe
- United Kingdom > England
- Cambridgeshire > Cambridge (0.04)
- Sweden > Stockholm
- Stockholm (0.04)
- Spain
- Galicia > Madrid (0.04)
- Valencian Community > Valencia Province
- Valencia (0.04)
- Germany > North Rhine-Westphalia
- Cologne Region > Bonn (0.04)
- United Kingdom > England
- Asia
- China (0.04)
- India > West Bengal
- Kolkata (0.04)
- Genre:
- Research Report > New Finding (1.00)
- Industry:
- Health & Medicine (1.00)