深度生成模型:综述

Achraf Oussidi, Azeddine Elhassouny
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引用次数: 95

摘要

在过去的十年里,生成模型已经走到了深度学习的前沿,到目前为止,这种炒作似乎不会很快消失。在本文中,我们概述了最新的革命性深度生成模型的最重要的构建块,如RBM, DBM, DBN, VAE和GAN。我们还将看看三个最先进的生成模型,即PixelRNN, DRAW和NADE。我们将深入研究他们独特的架构、学习过程以及他们的潜力和局限性。我们还将回顾一些在尝试使用浅生成架构设计和训练深度生成架构时出现的已知问题,以及不同的模型如何处理这些问题。本文并不打算对这些模型进行全面的研究,而是为那些对该领域感兴趣的人提供一个起点。
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Deep generative models: Survey
Generative models have found their way to the forefront of deep learning the last decade and so far, it seems that the hype will not fade away any time soon. In this paper, we give an overview of the most important building blocks of most recent revolutionary deep generative models such as RBM, DBM, DBN, VAE and GAN. We will also take a look at three of state-of-the-art generative models, namely PixelRNN, DRAW and NADE. We will delve into their unique architectures, the learning procedures and their potential and limitations. We will also review some of the known issues that arise when trying to design and train deep generative architectures using shallow ones and how different models deal with these issues. This paper is not meant to be a comprehensive study of these models, but rather a starting point for those who bear an interest in the field.
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