OOD detection: training-time regularization
Last updated on 2024-08-14 | Edit this page
Overview
Questions
- What are the key considerations when designing algorithms for OOD detection?
- How can OOD detection be incorporated into the loss functions of models?
- What are the challenges and best practices for training models with OOD detection capabilities?
Objectives
- Understand the critical design considerations for creating effective OOD detection algorithms.
- Learn how to integrate OOD detection into the loss functions of machine learning models.
- Identify the challenges in training models with OOD detection and explore best practices to overcome these challenges.