Auxiliary Deep Generative Models
About
Deep generative models parameterized by neural networks have recently achieved state-of-the-art performance in unsupervised and semi-supervised learning. We extend deep generative models with auxiliary variables which improves the variational approximation. The auxiliary variables leave the generative model unchanged but make the variational distribution more expressive. Inspired by the structure of the auxiliary variable we also propose a model with two stochastic layers and skip connections. Our findings suggest that more expressive and properly specified deep generative models converge faster with better results. We show state-of-the-art performance within semi-supervised learning on MNIST, SVHN and NORB datasets.
Lars Maal{\o}e, Casper Kaae S{\o}nderby, S{\o}ren Kaae S{\o}nderby, Ole Winther• 2016
Related benchmarks
| Task | Dataset | Result | Rank | |
|---|---|---|---|---|
| Image Classification | SVHN (test) | -- | 362 | |
| Classification | SVHN (test) | Error Rate16.61 | 182 | |
| Image Classification | MNIST standard (test) | -- | 40 | |
| Semi-supervised Image Classification | MNIST (test) | Test Error0.0096 | 31 | |
| Semi-supervised classification | MNIST 100 labels | Error Rate0.0096 | 16 | |
| Image Classification | SVHN 1,000 labels (train) | Error Rate (%)16.61 | 15 | |
| Semi-supervised classification | SVHN 1000 labels | Error Rate16.61 | 14 | |
| Image Classification | MNIST permutation-invariant (test) | Incorrect Test Examples Count962 | 14 | |
| Generative Modeling | MNIST permutation-invariant (test) | Log Likelihood-82.97 | 10 | |
| Semi-supervised classification | MNIST 100 labels statically binarized (test) | Error Rate (%)0.96 | 10 |
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