Probabilistic Models with Deep Neural Networks

Masegosa, Andrés R. and Cabañas, Rafael and Langseth, Helge and Nielsen, Thomas D. and Salmerón, Antonio (2021) Probabilistic Models with Deep Neural Networks. Entropy, 23 (1). p. 117. ISSN 1099-4300

[thumbnail of entropy-23-00117-v2.pdf] Text
entropy-23-00117-v2.pdf - Published Version

Download (522kB)

Abstract

Recent advances in statistical inference have significantly expanded the toolbox of probabilistic modeling. Historically, probabilistic modeling has been constrained to very restricted model classes, where exact or approximate probabilistic inference is feasible. However, developments in variational inference, a general form of approximate probabilistic inference that originated in statistical physics, have enabled probabilistic modeling to overcome these limitations: (i) Approximate probabilistic inference is now possible over a broad class of probabilistic models containing a large number of parameters, and (ii) scalable inference methods based on stochastic gradient descent and distributed computing engines allow probabilistic modeling to be applied to massive data sets. One important practical consequence of these advances is the possibility to include deep neural networks within probabilistic models, thereby capturing complex non-linear stochastic relationships between the random variables. These advances, in conjunction with the release of novel probabilistic modeling toolboxes, have greatly expanded the scope of applications of probabilistic models, and allowed the models to take advantage of the recent strides made by the deep learning community. In this paper, we provide an overview of the main concepts, methods, and tools needed to use deep neural networks within a probabilistic modeling framework.

Item Type: Article
Uncontrolled Keywords: Keywords: deep probabilistic modeling; variational inference; neural networks; latent variable models; Bayesian learning
Subjects: STM Repository > Physics and Astronomy
Depositing User: Managing Editor
Date Deposited: 28 Apr 2023 04:45
Last Modified: 09 Jul 2024 06:56
URI: http://classical.goforpromo.com/id/eprint/435

Actions (login required)

View Item
View Item