Comments (1)
Dear @GloryyrolG ,
I have updated materials for 2d density estimation experiment under the directory 2d_density_estimation
.
If you want to reproduce training, please see nae_training_methods.ipynb
.
For visualization, please see draw_2d_density_estimation_figure.ipynb
and draw_nae_training_methods.ipynb
.
I have made a slight modification when I bring my classes to this repository, so things may not be exactly the same.
However, the training code seems to work.
Please let me know if there's anything strange.
Always thank you for your attention.
from normalized-autoencoders.
Related Issues (12)
- where is cifar10_trainval_idx.npy? HOT 1
- VAE Comparison HOT 1
- Divergence of CD/PCD HOT 2
- Noise Annealing with the Step Size HOT 1
- Some Keyword missed and unexpected in .yml files HOT 2
- some key word missing HOT 2
- 안녕하세요. 최근에 딥러닝을 공부하고있는 직장인입니다. 로스함수 관련 궁금한게 있어 문의드립니다. HOT 2
- Some unexpected keyword augments when constructing the model HOT 1
- Not Good Quality of the Generated Images on CIFAR-10 HOT 3
- model_best VS. Training from Scratch HOT 5
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from normalized-autoencoders.