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Rate-Distortion Auto-Encoders

Machine Learning 2014-04-18 v2

Abstract

A rekindled the interest in auto-encoder algorithms has been spurred by recent work on deep learning. Current efforts have been directed towards effective training of auto-encoder architectures with a large number of coding units. Here, we propose a learning algorithm for auto-encoders based on a rate-distortion objective that minimizes the mutual information between the inputs and the outputs of the auto-encoder subject to a fidelity constraint. The goal is to learn a representation that is minimally committed to the input data, but that is rich enough to reconstruct the inputs up to certain level of distortion. Minimizing the mutual information acts as a regularization term whereas the fidelity constraint can be understood as a risk functional in the conventional statistical learning setting. The proposed algorithm uses a recently introduced measure of entropy based on infinitely divisible matrices that avoids the plug in estimation of densities. Experiments using over-complete bases show that the rate-distortion auto-encoders can learn a regularized input-output mapping in an implicit manner.

Keywords

Cite

@article{arxiv.1312.7381,
  title  = {Rate-Distortion Auto-Encoders},
  author = {Luis G. Sanchez Giraldo and Jose C. Principe},
  journal= {arXiv preprint arXiv:1312.7381},
  year   = {2014}
}

Comments

Submission International Conference on Learning Representations 2014

R2 v1 2026-06-22T02:36:02.464Z