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Document type:
Masterarbeit
Author(s):
Amine M'Charrak
Title:
Deep Learning for Natural Language Processing (NLP) using Variational Autoencoders (VAE)
Translated title:
Deep Learning for Natural Language Processing (NLP) using Variational Autoencoders (VAE)
Abstract:
Observations of complex data in the real world might be caused by several underlying generative factors that account for specific perceptual features. However, these factors are usually entangled and can not be underlined directly from the data. Modeling such factors could generalize the learning of complex concepts through compositions of simpler abstractions. This enables us to understand the inner structure of the data, to process it efficiently and to control meaningful generative processes...     »
Translated abstract:
Observations of complex data in the real world might be caused by several underlying generative factors that account for specific perceptual features. However, these factors are usually entangled and can not be underlined directly from the data. Modeling such factors could generalize the learning of complex concepts through compositions of simpler abstractions. This enables us to understand the inner structure of the data, to process it efficiently and to control meaningful generative processe...     »
Keywords:
generative models, disentanglement, variational inference, natural language processing, autoencoder
Subject:
DAT Datenverarbeitung, Informatik
DDC:
000 Informatik, Wissen, Systeme
Advisor:
Steinbach, Eckehard (Prof. Dr.)
Year:
2018
Pages:
130
Language:
en
Language from translation:
en
University:
Technische Universität München
Faculty:
Fakultät für Elektrotechnik und Informationstechnik
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