Submitted by grid_world t3_y45kyh in deeplearning
LuckyLuke87b t1_it19qkj wrote
Reply to comment by grid_world in Variational Autoencoder automatic latent dimension selection by grid_world
Have you tried to generate samples by sampling from your latent space prior and feeding it to the decoder? In my experience it is often necessary to tune the weight of the KL-Loss such, that the decoder is a proper generator. Once this is done, some of the latent representations from the decoder get very close to the prior distributions, while other represent the relevant information. Next step is, to compare, if these relevant latent dimensions are the same on various encoded samples. Finally, prune all dimensions, which basically never differ from the prior up to some tolerance.
Viewing a single comment thread. View all comments