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arxiv:1605.02226

Neural Autoregressive Distribution Estimation

Published on May 7, 2016
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Abstract

NADE models, leveraging probability product rules and weight sharing from RBMs, achieve competitive performance in distribution and density estimation, handling both binary and real-valued data, and can be adapted to be order-agnostic and utilize deep convolutional architectures for image data.

AI-generated summary

We present Neural Autoregressive Distribution Estimation (NADE) models, which are neural network architectures applied to the problem of unsupervised distribution and density estimation. They leverage the probability product rule and a weight sharing scheme inspired from restricted Boltzmann machines, to yield an estimator that is both tractable and has good generalization performance. We discuss how they achieve competitive performance in modeling both binary and real-valued observations. We also present how deep NADE models can be trained to be agnostic to the ordering of input dimensions used by the autoregressive product rule decomposition. Finally, we also show how to exploit the topological structure of pixels in images using a deep convolutional architecture for NADE.

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