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Multiple-hypothesis RNN-T Loss for Unsupervised Fine-tuning and
  Self-training of Neural Transducer

Multiple-hypothesis RNN-T Loss for Unsupervised Fine-tuning and Self-training of Neural Transducer

29 July 2022
Cong-Thanh Do
Mohan Li
R. Doddipatla
ArXiv (abs)PDFHTML

Papers citing "Multiple-hypothesis RNN-T Loss for Unsupervised Fine-tuning and Self-training of Neural Transducer"

19 / 19 papers shown
Title
Fast Text-Only Domain Adaptation of RNN-Transducer Prediction Network
Fast Text-Only Domain Adaptation of RNN-Transducer Prediction Network
Janne Pylkkönen
Antti Ukkonen
Juho Kilpikoski
Samu Tamminen
Hannes Heikinheimo
48
27
0
22 Apr 2021
Multiple-hypothesis CTC-based semi-supervised adaptation of end-to-end
  speech recognition
Multiple-hypothesis CTC-based semi-supervised adaptation of end-to-end speech recognition
Cong-Thanh Do
R. Doddipatla
Thomas Hain
37
6
0
29 Mar 2021
Advancing RNN Transducer Technology for Speech Recognition
Advancing RNN Transducer Technology for Speech Recognition
G. Saon
Zoltan Tueske
Daniel Bolaños
Brian Kingsbury
92
88
0
17 Mar 2021
Unsupervised Domain Adaptation for Speech Recognition via Uncertainty
  Driven Self-Training
Unsupervised Domain Adaptation for Speech Recognition via Uncertainty Driven Self-Training
Sameer Khurana
Niko Moritz
Takaaki Hori
Jonathan Le Roux
63
58
0
26 Nov 2020
Semi-Supervised Speech Recognition via Graph-based Temporal
  Classification
Semi-Supervised Speech Recognition via Graph-based Temporal Classification
Niko Moritz
Takaaki Hori
Jonathan Le Roux
107
28
0
29 Oct 2020
Adaptation Algorithms for Neural Network-Based Speech Recognition: An
  Overview
Adaptation Algorithms for Neural Network-Based Speech Recognition: An Overview
P. Bell
Joachim Fainberg
Ondˇrej Klejch
Jinyu Li
Steve Renals
P. Swietojanski
100
78
0
14 Aug 2020
Developing RNN-T Models Surpassing High-Performance Hybrid Models with
  Customization Capability
Developing RNN-T Models Surpassing High-Performance Hybrid Models with Customization Capability
Jinyu Li
Rui Zhao
Zhong Meng
Yanqing Liu
Wenning Wei
...
V. Mazalov
Zhenghao Wang
Lei He
Sheng Zhao
Jiawei Liu
63
109
0
30 Jul 2020
Efficient minimum word error rate training of RNN-Transducer for
  end-to-end speech recognition
Efficient minimum word error rate training of RNN-Transducer for end-to-end speech recognition
Jinxi Guo
Gautam Tiwari
J. Droppo
Maarten Van Segbroeck
Che-Wei Huang
A. Stolcke
Roland Maas
51
55
0
27 Jul 2020
On the Comparison of Popular End-to-End Models for Large Scale Speech
  Recognition
On the Comparison of Popular End-to-End Models for Large Scale Speech Recognition
Jinyu Li
Yu-Huan Wu
Yashesh Gaur
Chengyi Wang
Rui Zhao
Shujie Liu
54
137
0
28 May 2020
PyTorch: An Imperative Style, High-Performance Deep Learning Library
PyTorch: An Imperative Style, High-Performance Deep Learning Library
Adam Paszke
Sam Gross
Francisco Massa
Adam Lerer
James Bradbury
...
Sasank Chilamkurthy
Benoit Steiner
Lu Fang
Junjie Bai
Soumith Chintala
ODL
553
42,639
0
03 Dec 2019
End-to-end ASR: from Supervised to Semi-Supervised Learning with Modern
  Architectures
End-to-end ASR: from Supervised to Semi-Supervised Learning with Modern Architectures
Gabriel Synnaeve
Qiantong Xu
Jacob Kahn
Tatiana Likhomanenko
Edouard Grave
Vineel Pratap
Anuroop Sriram
Vitaliy Liptchinsky
R. Collobert
SSLAI4TS
117
247
0
19 Nov 2019
Improving RNN Transducer Modeling for End-to-End Speech Recognition
Improving RNN Transducer Modeling for End-to-End Speech Recognition
Jinyu Li
Rui Zhao
Hu Hu
Jiawei Liu
60
170
0
26 Sep 2019
Self-Training for End-to-End Speech Recognition
Self-Training for End-to-End Speech Recognition
Jacob Kahn
Ann Lee
Awni Y. Hannun
SSL
61
236
0
19 Sep 2019
Exploiting semi-supervised training through a dropout regularization in
  end-to-end speech recognition
Exploiting semi-supervised training through a dropout regularization in end-to-end speech recognition
S. Dey
P. Motlícek
Trung H. Bui
Franck Dernoncourt
33
13
0
08 Aug 2019
On the Choice of Modeling Unit for Sequence-to-Sequence Speech
  Recognition
On the Choice of Modeling Unit for Sequence-to-Sequence Speech Recognition
Kazuki Irie
Rohit Prabhavalkar
Anjuli Kannan
A. Bruguier
David Rybach
Patrick Nguyen
66
37
0
05 Feb 2019
ESPnet: End-to-End Speech Processing Toolkit
ESPnet: End-to-End Speech Processing Toolkit
Shinji Watanabe
Takaaki Hori
Shigeki Karita
Tomoki Hayashi
Jiro Nishitoba
...
Jahn Heymann
Sanjeev Khudanpur
Nanxin Chen
Adithya Renduchintala
Tsubasa Ochiai
VLM
120
1,514
0
30 Mar 2018
Exploring Neural Transducers for End-to-End Speech Recognition
Exploring Neural Transducers for End-to-End Speech Recognition
Eric Battenberg
Jitong Chen
R. Child
Adam Coates
Yashesh Gaur Yi Li
...
Hairong Liu
S. Satheesh
David Seetapun
Anuroop Sriram
Zhenyao Zhu
AI4TS
86
230
0
24 Jul 2017
An overview of gradient descent optimization algorithms
An overview of gradient descent optimization algorithms
Sebastian Ruder
ODL
209
6,203
0
15 Sep 2016
Sequence Transduction with Recurrent Neural Networks
Sequence Transduction with Recurrent Neural Networks
Alex Graves
195
1,872
0
14 Nov 2012
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