Recurrent neural network language models (RNNLMs) have been shown to consistently improve Word Error Rates (WERs) of large vocabulary speech recognition systems employing n-gram LMs. In this paper we investigate supervised and unsupervised discriminative adaptation of RNNLMs in a broadcast transcription task to target domains defined by either genre or show. We have explored two approaches based on (1) scaling forward-propagated hidden activations (Learning Hidden Unit Contributions (LHUC) technique) and (2) direct fine-tuning of the parameters of the whole RNNLM. To investigate the effectiveness of the proposed methods we carry out experiments on multi-genre broadcast (MGB) data following the MGB-2015 challenge protocol. We observe small b...
Virtually any modern speech recognition system relies on count-based language models. In this thesis...
This research addresses the language model (LM) domain mismatch problem in automatic speech recognit...
Deep neural networks have advanced the state-of-the-art in automatic speech recognition, when combin...
Recurrent neural network language models (RNNLMs) have re-cently become increasingly popular for man...
The goal of this thesis is to advance the use of recurrent neural network language models (RNNLMs) ...
Recurrent neural network language models (RNNLMs) generally outperform n-gram language models when u...
Recurrent neural network language models (RNNLMs) have consistently outperformed n-gram language mod...
The recurrent neural network language model (RNNLM) has been demonstrated to consistently reduce per...
This paper proposes a simple yet effective model-based neural network speaker adaptation technique t...
The files in the dataset correspond to results that have been generated for the IEEE/ACM Transaction...
Recurrent neural network language models (RNNLMs) are powerful language modeling techniques. Signifi...
This work was supported by the EPSRC [EPSRC Natural Speech Technology programme grant http://www.nat...
One possible explanation for RNN language models' outsized effectiveness in voice recognition is its...
A recurrent neural network language model (RNN-LM) can use a long word context more than can an n-gr...
Ebru Arısoy (MEF Author)##nofulltext##Recurrent neural network language models have enjoyed great su...
Virtually any modern speech recognition system relies on count-based language models. In this thesis...
This research addresses the language model (LM) domain mismatch problem in automatic speech recognit...
Deep neural networks have advanced the state-of-the-art in automatic speech recognition, when combin...
Recurrent neural network language models (RNNLMs) have re-cently become increasingly popular for man...
The goal of this thesis is to advance the use of recurrent neural network language models (RNNLMs) ...
Recurrent neural network language models (RNNLMs) generally outperform n-gram language models when u...
Recurrent neural network language models (RNNLMs) have consistently outperformed n-gram language mod...
The recurrent neural network language model (RNNLM) has been demonstrated to consistently reduce per...
This paper proposes a simple yet effective model-based neural network speaker adaptation technique t...
The files in the dataset correspond to results that have been generated for the IEEE/ACM Transaction...
Recurrent neural network language models (RNNLMs) are powerful language modeling techniques. Signifi...
This work was supported by the EPSRC [EPSRC Natural Speech Technology programme grant http://www.nat...
One possible explanation for RNN language models' outsized effectiveness in voice recognition is its...
A recurrent neural network language model (RNN-LM) can use a long word context more than can an n-gr...
Ebru Arısoy (MEF Author)##nofulltext##Recurrent neural network language models have enjoyed great su...
Virtually any modern speech recognition system relies on count-based language models. In this thesis...
This research addresses the language model (LM) domain mismatch problem in automatic speech recognit...
Deep neural networks have advanced the state-of-the-art in automatic speech recognition, when combin...