Layer-wise learning of deep generative models

When using deep, multi-layered architectures to build generative models of data, it is difficult to train all layers at once. We propose a layer-wise training procedure admitting a performance guarantee compared to the global optimum. It is based on an optimistic proxy of future performance, the best latent marginal. We interpret auto-encoders in this setting as generative models, by showing that they train a lower bound of this criterion. We test the new learning procedure against a state of the art method (stacked RBMs), and find it to improve performance. Both theory and experiments highlight the importance, when training deep architectures, of using an inference model (from data to hidden variables) richer than the generative model (from hidden variables to data).

Data and Resources

Additional Info

Field Value
Source https://hal.science/hal-00794302
Author Arnold, Ludovic, Ollivier, Yann
Maintainer CCSD
Last Updated May 14, 2026, 04:25 (UTC)
Created May 14, 2026, 04:25 (UTC)
Identifier hal-00794302
Language en
contributor Laboratoire de Recherche en Informatique (LRI) ; Université Paris-Sud - Paris 11 (UP11)-CentraleSupélec-Centre National de la Recherche Scientifique (CNRS)
creator Arnold, Ludovic
date 2013-02-16T00:00:00
harvest_object_id 64465e6d-08d3-4b55-8bb7-a33af590b979
harvest_source_id 3374d638-d20b-4672-ba96-a23232d55657
harvest_source_title test moissonnage SELUNE
metadata_modified 2026-03-19T00:00:00
relation info:eu-repo/semantics/altIdentifier/arxiv/1212.1524
set_spec type:UNDEFINED