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Language Model
Natural Language
Speech Recognition
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Unsupervised training techniques for natural language call routing
Unsupervised training techniques for natural language call routing,10.1109/ICASSP.2002.5745509,Rukmini Iyer,Herbert Gish,Dan McCarthy
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Unsupervised training techniques for natural language call routing
(
Citations: 7
)
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Rukmini Iyer
,
Herbert Gish
,
Dan McCarthy
Developing a speech application requires collecting and manually transcribing many hours of task-specific training. In recent years, unsupervised training approaches, which automatically transcribe task-dependent audio and train speech and language models using these automatic transcriptions, have reduced dependence on manual transcriptions. In this paper, we leverage our state-of-the-art
speech recognition
technology and use automatic transcriptions to reduce time and manual effort in developing a call routing application. Two key differentiators of our work include using different recognition strategies for unsupervised training vs. call routing, and investigating the impact of unsupervised training on call routing accuracy.
Conference:
International Conference on Acoustics, Speech, and Signal Processing - ICASSP
, vol. 4, pp. IV-3900-IV-3903, 2002
DOI:
10.1109/ICASSP.2002.5745509
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Citation Context
(3)
...Note that our focus is different from training call routing systems with automatic speech recognizer (ASR) output instead of manual transcriptions such as (
Iyer et al. 2002;
Alshawi 2003)...
Gokhan Tur
.
Extending boosting for large scale spoken language understanding
...A number of researchers [
1
][2] have recently published their work on natural language call routing applications...
Sameeh Ullah
,
et al.
Soft computing-based approach for natural language call routing system...
...In [
4
], maximum likelihood linear regression was applied for adapting ASR models and bootstrapping call routing applications...
D. Hakkani-Tur
,
et al.
Unsupervised and active learning in automatic speech recognition for c...
References
(3)
Using untranscribed training data to improve performance
(
Citations: 7
)
George Zavaliagkos
,
Man-Hung Siu
,
Thomas Colthurst
,
Jayadev Billa
Published in 1998.
Portability issues for speech recognition technologies
(
Citations: 4
)
Lori Lamel
,
Fabrice Lefevre
,
Jean-luc Gauvain
,
Gilles Adda
Conference:
Human Language Technology - HLT
, 2000
Using out-of-domain data to improve in-domain language models
(
Citations: 28
)
Rukmini Iyer
,
Mari Ostendorf
,
Herb Gish
Journal:
IEEE Signal Processing Letters - IEEE SIGNAL PROCESS LETT
, vol. 4, no. 8, pp. 221-223, 1997
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Citations
(7)
Extending boosting for large scale spoken language understanding
(
Citations: 2
)
Gokhan Tur
Journal:
Machine Learning - ML
, vol. 69, no. 1, pp. 55-74, 2007
Soft computing-based approach for natural language call routing systems
(
Citations: 1
)
Sameeh Ullah
,
Fakhri Karray
,
Arash Abghari
,
Sushil Podder
Conference:
International Symposium on Signal Processing and Its Applications - ISSPA
, 2007
An active approach to spoken language processing
(
Citations: 9
)
Dilek Z. Hakkani-tür
,
Giuseppe Riccardi
,
Gökhan Tür
Journal:
ACM Transactions on Speech and Language Processing - TSLP
, vol. 3, no. 3, pp. 1-31, 2006
Combining active and semi-supervised learning for spoken language understanding
(
Citations: 42
)
Gökhan Tür
,
Dilek Z. Hakkani-tür
,
Robert E. Schapire
Journal:
Speech Communication
, vol. 45, no. 2, pp. 171-186, 2005
Unsupervised and active learning in automatic speech recognition for call classification
(
Citations: 21
)
D. Hakkani-Tur
,
Gokhan Tur
,
Mazin Rahim
,
Giuseppe Riccardi
Conference:
International Conference on Acoustics, Speech, and Signal Processing - ICASSP
, vol. 1, pp. I-429-32 vol, 2004