
#60 Geometric Deep Learning Blueprint (Special Edition)
Machine Learning Street Talk (MLST)
Building Equivariance into Architecture
- When dealing with data like medical images, where rotations shouldn't affect classification, build rotation equivariance directly into the model's architecture.
- This ensures consistent predictions regardless of orientation, even for unseen test data.
- Relying solely on data augmentation can lead to inconsistencies where a rotated test image is classified differently despite training on various orientations.
- Guaranteeing equivariance through architecture enhances the reliability and accuracy of models, especially in domains like medical imaging.
00:00
Transcript
Play full episode
Remember Everything You Learn from Podcasts
Save insights instantly, chat with episodes, and build lasting knowledge - all powered by AI.