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Generalized Normalizing Flows Via Markov Chains 1st Edition Paul Lyonel Hagemann

  • SKU: BELL-57875756
Generalized Normalizing Flows Via Markov Chains 1st Edition Paul Lyonel Hagemann
$ 31.00 $ 45.00 (-31%)

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Generalized Normalizing Flows Via Markov Chains 1st Edition Paul Lyonel Hagemann instant download after payment.

Publisher: Cambridge University Press
File Extension: PDF
File size: 15.47 MB
Pages: 57
Author: Paul Lyonel Hagemann, Johannes Hertrich, Gabriele Steidl
ISBN: 9781009331005, 9781009331012, 9781009331036, 9781009330992, 1009331000, 1009331019, 1009331035, 1009330993
Language: English
Year: 2023
Edition: 1

Product desciption

Generalized Normalizing Flows Via Markov Chains 1st Edition Paul Lyonel Hagemann by Paul Lyonel Hagemann, Johannes Hertrich, Gabriele Steidl 9781009331005, 9781009331012, 9781009331036, 9781009330992, 1009331000, 1009331019, 1009331035, 1009330993 instant download after payment.

Normalizing flows, diffusion normalizing flows and variational autoencoders are powerful generative models. This Element provides a unified framework to handle these approaches via Markov chains. The authors consider stochastic normalizing flows as a pair of Markov chains fulfilling some properties, and show how many state-of-the-art models for data generation fit into this framework. Indeed numerical simulations show that including stochastic layers improves the expressivity of the network and allows for generating multimodal distributions from unimodal ones. The Markov chains point of view enables the coupling of both deterministic layers as invertible neural networks and stochastic layers as Metropolis-Hasting layers, Langevin layers, variational autoencoders and diffusion normalizing flows in a mathematically sound way. The authors' framework establishes a useful mathematical tool to combine the various approaches.

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