H. Wang, and D. Yeung. (2016)cite arxiv:1604.01662Comment: To appear in ACM Computing Surveys (CSUR) 2020.
Abstract
A comprehensive artificial intelligence system needs to not only perceive the
environment with different `senses' (e.g., seeing and hearing) but also infer
the world's conditional (or even causal) relations and corresponding
uncertainty. The past decade has seen major advances in many perception tasks
such as visual object recognition and speech recognition using deep learning
models. For higher-level inference, however, probabilistic graphical models
with their Bayesian nature are still more powerful and flexible. In recent
years, Bayesian deep learning has emerged as a unified probabilistic framework
to tightly integrate deep learning and Bayesian models. In this general
framework, the perception of text or images using deep learning can boost the
performance of higher-level inference and in turn, the feedback from the
inference process is able to enhance the perception of text or images. This
survey provides a comprehensive introduction to Bayesian deep learning and
reviews its recent applications on recommender systems, topic models, control,
etc. Besides, we also discuss the relationship and differences between Bayesian
deep learning and other related topics such as Bayesian treatment of neural
networks.
%0 Generic
%1 wang2016survey
%A Wang, Hao
%A Yeung, Dit-Yan
%D 2016
%K 2016 bayesian deep-learning survey
%T A Survey on Bayesian Deep Learning
%U http://arxiv.org/abs/1604.01662
%X A comprehensive artificial intelligence system needs to not only perceive the
environment with different `senses' (e.g., seeing and hearing) but also infer
the world's conditional (or even causal) relations and corresponding
uncertainty. The past decade has seen major advances in many perception tasks
such as visual object recognition and speech recognition using deep learning
models. For higher-level inference, however, probabilistic graphical models
with their Bayesian nature are still more powerful and flexible. In recent
years, Bayesian deep learning has emerged as a unified probabilistic framework
to tightly integrate deep learning and Bayesian models. In this general
framework, the perception of text or images using deep learning can boost the
performance of higher-level inference and in turn, the feedback from the
inference process is able to enhance the perception of text or images. This
survey provides a comprehensive introduction to Bayesian deep learning and
reviews its recent applications on recommender systems, topic models, control,
etc. Besides, we also discuss the relationship and differences between Bayesian
deep learning and other related topics such as Bayesian treatment of neural
networks.
@misc{wang2016survey,
abstract = {A comprehensive artificial intelligence system needs to not only perceive the
environment with different `senses' (e.g., seeing and hearing) but also infer
the world's conditional (or even causal) relations and corresponding
uncertainty. The past decade has seen major advances in many perception tasks
such as visual object recognition and speech recognition using deep learning
models. For higher-level inference, however, probabilistic graphical models
with their Bayesian nature are still more powerful and flexible. In recent
years, Bayesian deep learning has emerged as a unified probabilistic framework
to tightly integrate deep learning and Bayesian models. In this general
framework, the perception of text or images using deep learning can boost the
performance of higher-level inference and in turn, the feedback from the
inference process is able to enhance the perception of text or images. This
survey provides a comprehensive introduction to Bayesian deep learning and
reviews its recent applications on recommender systems, topic models, control,
etc. Besides, we also discuss the relationship and differences between Bayesian
deep learning and other related topics such as Bayesian treatment of neural
networks.},
added-at = {2020-07-04T20:11:59.000+0200},
author = {Wang, Hao and Yeung, Dit-Yan},
biburl = {https://www.bibsonomy.org/bibtex/200af9e5fceaddaf9710b3cd8cdd5d20b/analyst},
description = {[1604.01662] A Survey on Bayesian Deep Learning},
interhash = {473e00846ea8cbb868fa0f40c6cc7d89},
intrahash = {00af9e5fceaddaf9710b3cd8cdd5d20b},
keywords = {2016 bayesian deep-learning survey},
note = {cite arxiv:1604.01662Comment: To appear in ACM Computing Surveys (CSUR) 2020},
timestamp = {2020-07-04T20:11:59.000+0200},
title = {A Survey on Bayesian Deep Learning},
url = {http://arxiv.org/abs/1604.01662},
year = 2016
}