Paper ID: 2310.01712

Generative Autoencoding of Dropout Patterns

Shunta Maeda

We propose a generative model termed Deciphering Autoencoders. In this model, we assign a unique random dropout pattern to each data point in the training dataset and then train an autoencoder to reconstruct the corresponding data point using this pattern as information to be encoded. Since the training of Deciphering Autoencoders relies solely on reconstruction error, it offers more stable training than other generative models. Despite its simplicity, Deciphering Autoencoders show comparable sampling quality to DCGAN on the CIFAR-10 dataset.

Submitted: Oct 3, 2023