Discriminant Distance-Aware Representation on Deterministic Uncertainty Quantification Methods
Zhang, Jiaxin, Das, Kamalika, Kumar, Sricharan
–arXiv.org Artificial Intelligence
Uncertainty estimation is a crucial aspect of deploying dependable deep learning models in safety-critical systems. In this study, we introduce a novel and efficient method for deterministic uncertainty estimation called Discriminant Distance-Awareness Representation (DDAR). Our approach involves constructing a DNN model that incorporates a set of prototypes in its latent representations, enabling us to analyze valuable feature information from the input data. By leveraging a distinction maximization layer over optimal trainable prototypes, DDAR can learn a discriminant distance-awareness representation. We demonstrate that DDAR overcomes feature collapse by relaxing the Lipschitz constraint that hinders the practicality of deterministic uncertainty methods (DUMs) architectures. Our experiments show that DDAR is a flexible and architecture-agnostic method that can be easily integrated as a pluggable layer with distance-sensitive metrics, outperforming state-of-the-art uncertainty estimation methods on multiple benchmark problems.
arXiv.org Artificial Intelligence
Feb-19-2024
- Country:
- Europe > Netherlands (0.14)
- Genre:
- Research Report (0.70)
- Technology:
- Information Technology > Artificial Intelligence
- Machine Learning
- Neural Networks > Deep Learning (0.69)
- Statistical Learning (0.95)
- Natural Language (1.00)
- Representation & Reasoning (1.00)
- Vision (0.94)
- Machine Learning
- Information Technology > Artificial Intelligence