Week 7 – Practicum: Under- and over-complete autoencoders
Course website: http://bit.ly/pDL-home
Playlist: http://bit.ly/pDL-YouTube
Speaker: Alfredo Canziani
Week 7: http://bit.ly/pDL-en-07
0:00:00 – Week 7 – Practicum
PRACTICUM: http://bit.ly/pDL-en-07-3
We discussed some applications of Autoencoders and talked about why we want to use them. Then we talked about different architectures of Autoencoders (under or over complete hidden layer), how to avoid overfitting issues and the loss functions we should use. Finally we implemented a standard Autoencoder and a denoising Autoencoder.
0:00:55 – Application of Autoencoders
0:14:39 – Architecture and loss function in Autoencoders
0:41:31 – Notebook example for different types of Autoencoders
Видео Week 7 – Practicum: Under- and over-complete autoencoders канала Alfredo Canziani
Playlist: http://bit.ly/pDL-YouTube
Speaker: Alfredo Canziani
Week 7: http://bit.ly/pDL-en-07
0:00:00 – Week 7 – Practicum
PRACTICUM: http://bit.ly/pDL-en-07-3
We discussed some applications of Autoencoders and talked about why we want to use them. Then we talked about different architectures of Autoencoders (under or over complete hidden layer), how to avoid overfitting issues and the loss functions we should use. Finally we implemented a standard Autoencoder and a denoising Autoencoder.
0:00:55 – Application of Autoencoders
0:14:39 – Architecture and loss function in Autoencoders
0:41:31 – Notebook example for different types of Autoencoders
Видео Week 7 – Practicum: Under- and over-complete autoencoders канала Alfredo Canziani
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