2013

Generalized Denoising Auto-Encoders as Generative Models

Pascal Vincent

citations

Cite Score

31

AI summary

This paper introduces a probabilistic interpretation of DAEs, valid for any data type, corruption process, and reconstruction loss, to estimate the reverse conditional probability. It introduces a Markov chain that alternates sampling and the walkback training algorithm, showing improved sampling behavior and faster convergence.

Main Contributions

  • Introduces a probabilistic interpretation of DAEs for estimating reverse conditional probability.
  • Proposes a Markov chain for recovering a consistent estimator of P(X) through alternating sampling.
  • Introduces the walkback training algorithm to improve sampling behavior and accelerate convergence.
  • Validates the theoretical results through experiments on artificial and real data.
  • Suggests that non-infinitesimal corruption helps avoid spurious modes during sampling.

Abstract

Recent work has shown how denoising and contractive autoencoders implicitly capture the structure of the data-generating density, in the case where the corruption noise is Gaussian, the reconstruction error is the squared error, and the data is continuous-valued. This has led to various proposals for sampling from this implicitly learned density function, using Langevin and Metropolis-Hastings MCMC. However, it remained unclear how to connect the training procedure of regularized auto-encoders to the implicit estimation of the underlying data generating distribution when the data are discrete, or using other forms of corruption process and reconstruction errors. Another issue is the mathematical justification which is only valid in the limit of small corruption noise. We propose here a different attack on the problem, which deals with all these issues: arbitrary (but noisy enough) corruption, arbitrary reconstruction loss (seen as a log-likelihood), handling both discrete and continuous-valued variables, and removing the bias due to non-infinitesimal corruption noise (or non-infinitesimal contractive penalty).

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References [18]

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on August 1, 2025

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