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– Other types of loss functions
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Classroom Contents
Joint Embedding Method and Latent Variable Energy Based Models
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- 1 – Welcome to class
- 2 – Predictive models
- 3 – Multi-output system
- 4 – Notation factor graph
- 5 – The energy function Fx, y
- 6 – Inference
- 7 – Implicit function
- 8 – Conditional EBM
- 9 – Unconditional EBM
- 10 – EBM vs. probabilistic models
- 11 – Do we need a y at inference?
- 12 – When inference is hard
- 13 – Joint embeddings
- 14 – Latent variables
- 15 – Inference with latent variables
- 16 – Energies E and F
- 17 – Preview on the EBM practicum
- 18 – From energy to probabilities
- 19 – Examples: K-means and sparse coding
- 20 – Limiting the information capacity of the latent variable
- 21 – Training EBMs
- 22 – Maximum likelihood
- 23 – How to pick β?
- 24 – Problems with maximum likelihood
- 25 – Other types of loss functions
- 26 – Generalised margin loss
- 27 – General group loss
- 28 – Contrastive joint embeddings
- 29 – Denoising or mask autoencoder
- 30 – Summary and final remarks