AEVB

E835244

AEVB (Auto-Encoding Variational Bayes) is a foundational variational inference framework that combines neural networks and probabilistic modeling to learn latent representations of data, most notably underpinning variational autoencoders (VAEs).

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Predicate Object
instanceOf probabilistic machine learning method
variational inference framework
abbreviationOf Auto-Encoding Variational Bayes NERFINISHED
application density estimation
generative modeling
missing data imputation
semi-supervised learning
unsupervised representation learning
approximates intractable posterior distributions
arxivIdentifier arXiv:1312.6114
assumes differentiable generative model
reparameterizable latent variables in standard form
basedOn stochastic gradient variational inference
variational Bayes
citationCountCategory highly cited
coreIdea optimize a variational lower bound using stochastic gradients
use an encoder network to amortize inference over latent variables
field deep learning
machine learning
probabilistic modeling
fullName Auto-Encoding Variational Bayes NERFINISHED
generativeNetworkType decoder network
inferenceNetworkType encoder network
influenced deep generative models research
representation learning research
inspired many VAE variants
introducedBy Diederik P. Kingma NERFINISHED
Max Welling NERFINISHED
introducedInPaper Auto-Encoding Variational Bayes NERFINISHED
learns latent representations of data
notableContribution introduction of the reparameterization trick for VAEs
unification of neural networks and variational Bayes for latent variable models
optimizes ELBO
evidence lower bound
publicationYear 2013
relatedTo Bayesian deep learning NERFINISHED
amortized variational inference
trainingObjective maximization of ELBO
typicalLikelihood neural network likelihood model GENERATED
typicalPrior multivariate Gaussian prior GENERATED
underpins VAE NERFINISHED
variational autoencoder NERFINISHED
uses latent variable models
neural networks
reparameterization trick
stochastic gradient descent

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