Autoencoder

Results: 93



#Item
21Published as a conference paper at ICLRM ULTI - TASK S EQUENCE TO S EQUENCE L EARNING Minh-Thang Luong∗, Quoc V. Le, Ilya Sutskever, Oriol Vinyals, Lukasz Kaiser Google Brain ,{qvl,ilyasu,vin

Published as a conference paper at ICLRM ULTI - TASK S EQUENCE TO S EQUENCE L EARNING Minh-Thang Luong∗, Quoc V. Le, Ilya Sutskever, Oriol Vinyals, Lukasz Kaiser Google Brain ,{qvl,ilyasu,vin

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Source URL: arxiv.org

Language: English - Date: 2016-03-01 20:44:46
22REVIEW  doi:nature14539 Deep learning Yann LeCun1,2, Yoshua Bengio3 & Geoffrey Hinton4,5

REVIEW doi:nature14539 Deep learning Yann LeCun1,2, Yoshua Bengio3 & Geoffrey Hinton4,5

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Source URL: www.cs.toronto.edu

Language: English - Date: 2015-08-10 12:54:32
23A Hierarchical Neural Autoencoder for Paragraphs and Documents Jiwei Li, Minh-Thang Luong and Dan Jurafsky Computer Science Department, Stanford University, Stanford, CA 94305, USA jiweil, lmthang,

A Hierarchical Neural Autoencoder for Paragraphs and Documents Jiwei Li, Minh-Thang Luong and Dan Jurafsky Computer Science Department, Stanford University, Stanford, CA 94305, USA jiweil, lmthang,

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Source URL: web.stanford.edu

Language: English - Date: 2015-08-25 00:02:48
24Tweet2Vec: Learning Tweet Embeddings Using Character-level CNN-LSTM Encoder-Decoder Soroush Vosoughi∗ Prashanth Vijayaraghavan∗

Tweet2Vec: Learning Tweet Embeddings Using Character-level CNN-LSTM Encoder-Decoder Soroush Vosoughi∗ Prashanth Vijayaraghavan∗

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Source URL: socialmachines.media.mit.edu

Language: English - Date: 2016-05-29 14:44:25
25Learning a Deep Hybrid Model for Semi-Supervised Text Classification Alexander G. Ororbia II, C. Lee Giles, David Reitter College of Information Sciences and Technology The Pennsylvania State University, University Park,

Learning a Deep Hybrid Model for Semi-Supervised Text Classification Alexander G. Ororbia II, C. Lee Giles, David Reitter College of Information Sciences and Technology The Pennsylvania State University, University Park,

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Source URL: www.anthology.aclweb.org

Language: English - Date: 2015-09-09 11:04:44
26arXiv:1312.3429v2 [cs.CV] 16 DecUnsupervised learning of depth and motion Kishore Konda Goethe University Frankfurt Germany

arXiv:1312.3429v2 [cs.CV] 16 DecUnsupervised learning of depth and motion Kishore Konda Goethe University Frankfurt Germany

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Source URL: arxiv.org

Language: English - Date: 2013-12-16 20:39:51
27arXiv:1402.3337v2 [stat.ML] 10 NovZero-bias autoencoders and the benefits of co-adapting features  Roland Memisevic

arXiv:1402.3337v2 [stat.ML] 10 NovZero-bias autoencoders and the benefits of co-adapting features Roland Memisevic

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Source URL: arxiv.org

Language: English - Date: 2014-11-11 20:54:00
28Deep Sparse Rectifier Neural Networks  Xavier Glorot DIRO, Universit´e de Montr´eal Montr´eal, QC, Canada

Deep Sparse Rectifier Neural Networks Xavier Glorot DIRO, Universit´e de Montr´eal Montr´eal, QC, Canada

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Source URL: jmlr.csail.mit.edu

Language: English - Date: 2011-06-30 04:28:55
29arXiv:1110.0107v2 [cs.CV] 5 AprLearning to relate images: Mapping units, complex cells and simultaneous eigenspaces Roland Memisevic University of Frankfurt

arXiv:1110.0107v2 [cs.CV] 5 AprLearning to relate images: Mapping units, complex cells and simultaneous eigenspaces Roland Memisevic University of Frankfurt

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Source URL: arxiv.org

Language: English - Date: 2012-04-08 20:12:35
30UNSUPERVISED NEURAL NETWORK BASED FEATURE EXTRACTION USING WEAK TOP-DOWN CONSTRAINTS Herman Kamper1,2 , Micha Elsner3 , Aren Jansen4 , Sharon Goldwater2 1  CSTR and 2 ILCC, School of Informatics, University of Edinburgh,

UNSUPERVISED NEURAL NETWORK BASED FEATURE EXTRACTION USING WEAK TOP-DOWN CONSTRAINTS Herman Kamper1,2 , Micha Elsner3 , Aren Jansen4 , Sharon Goldwater2 1 CSTR and 2 ILCC, School of Informatics, University of Edinburgh,

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Source URL: www.cstr.ed.ac.uk

Language: English - Date: 2015-09-29 11:06:25