Iterative Neural Autoregressive Distribution Estimator (NADE-k)

5 Jun 2014  ·  Tapani Raiko, Li Yao, Kyunghyun Cho, Yoshua Bengio ·

Training of the neural autoregressive density estimator (NADE) can be viewed as doing one step of probabilistic inference on missing values in data. We propose a new model that extends this inference scheme to multiple steps, arguing that it is easier to learn to improve a reconstruction in $k$ steps rather than to learn to reconstruct in a single inference step. The proposed model is an unsupervised building block for deep learning that combines the desirable properties of NADE and multi-predictive training: (1) Its test likelihood can be computed analytically, (2) it is easy to generate independent samples from it, and (3) it uses an inference engine that is a superset of variational inference for Boltzmann machines. The proposed NADE-k is competitive with the state-of-the-art in density estimation on the two datasets tested.

PDF Abstract
Task Dataset Model Metric Name Metric Value Global Rank Result Benchmark
Image Generation Binarized MNIST EoNADE-5 2hl (128 orders) nats 84.68 # 7

Methods


No methods listed for this paper. Add relevant methods here