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A path to unsupervised learning
Soumith Chintala
Facebook AI Research
through Adversarial Networks
Overview
of the talk
• Unsupervised Learning
• Generative Adversarial Networks
• Advances
• Using the learnt representations
• What’s next?
Unsupervised Learning
An introduction
Unsupervised Learning
An introduction
Supervised Learning
Unsupervised Learning
An introduction
Unsupervised Learning
Unsupervised Learning
Usefulness
Unsupervised Learning
Reusing representations
Generative Models
An introduction
A model that learns a distribution of images
Generative Models
An introduction
X = P(z), z controls dogness or catness
Generative Models
An introduction
X = P(z), z is a latent variable
Generative Models
An introduction
P(z) = neural network
Generative Adversarial Networks
Generative Adversarial Networks
Alternating optimization
Generator Sample Optimizer
Training
Data
Loss:
Looks Real
Generative Adversarial Networks
Generative Adversarial Networks
Alternating optimization
Generatornoise Sample
Classification
Loss
Training
Data
Learnt Real/Fake
Cost function
Discriminator
Generative Adversarial Networks
Alternating optimization
Generatornoise Sample
Classification
Loss
Training
Data
Discriminator
Trained via Gradient Descent
Generative Adversarial Networks
Alternating optimization
Generatornoise Sample
Classification
Loss
Training
Data
Discriminator
Optimizing to fool D
Generative Adversarial Networks
Alternating optimization
Generatornoise Sample
Classification
Loss
Training
Data
Discriminator
Optimizing to not get fooled by G
Generative Adversarial Networks
Optimizes Jensen-Shannon Divergence
Generative Adversarial Networks
Samples
Class-conditional GANs
Generator
noise
Sample
Classification
Loss
Training
Data
Discriminator
Class-conditional GANs
Not unsupervised
class
Video Prediction GANs
Generatornoise Sample
Classification
Loss
Training
Data
Discriminator
Video Prediction GANs
Generatornoise Sample
Classification
Loss
Training
Data
Discriminator
Video Prediction GANs
Generatornoise Sample
Classification
Loss
Training
Data
Discriminator
MSE
Loss
Video Prediction GANs
DCGANs
Latent space arithmetic
Using the GAN feature representation
Using the GAN feature representation
Using the GAN feature representation
Needs much lesser labeled data
Using the GAN feature representation
In-painting GANs
In-painting GANs
In-painting GANs
Disentangling representations
Disentangling representations
Disentangling representations
Disentangling representations
Disentangling representations
Disentangling representations
Stability and Representation Reuse
Stability and Representation Reuse
• Feature matching
• Minibatch discrimination
• Label smoothing
• What’s next?
Stability and Representation Reuse
Stability and Representation Reuse
What’s next?
• Planning and forward modeling
Questions
• When will adversarial networks take over the world?
• Soon.

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NYAI - A Path To Unsupervised Learning Through Adversarial Networks by Soumith Chintala