Learning Using Privileged Information (LUPI) or SVM+ was proposed by Vapnik in [the first paper].
High-level ideas:
- Use privileged information in the same way as for multi-view learning
- Transfer between privileged information and primary information
- Use privileged information to control the training process like training uncertainty or training difficulty (e.g., training loss, noise).
Applications:
SVM for binary classification
Gaussian process classification
- GPC [1]
L2 loss for classification/Hash
clustering
- clustering [1]
metric learning for verification/classification
CRF
- probilistic inference [1]: similar with multi-view, but integral over the latent privileged information space during testing
random forest
- conditional regression forest [1]: design node splitting criterion
matrix factorization for collaborative filtering
- PriMF [1]
Maximum Entropy Discrimination
- MED [1]
Deep Learning
- Hallucination network
- classification loss [1]
- model drop-out [1]