We propose a hypothesis reordering technique to improve speech recognition accuracy in a dialog system. For such systems, additional information external to the decoding process itself is available, in particular features derived fromthe parse and the dialog. Such features can be combined with recognizer features by means of a linear regression model to predict the most likely entry in the hypothesis list. We introduce the use of concept error rate as an alternative accuracy measurement and compare it withy the use of word error rate. The proposed model performs better than human subjects performing the same hypothesis reordering task.</p
We propose a simple yet effective method for improving speech recognition by reranking the N-best sp...
A recent trend in spoken dialogue research is the use of reinforcement learning to train dialogue sy...
The focus of this thesis proposal is to improve the ability of a computational system to understand ...
We propose a hypothesis reordering technique to improve speech recognition accuracy in a dialog syst...
This paper is an empirical study on the performance of different discriminative approaches to rerank...
The object function for Boosting training method in acoustic modeling aims to reduce utterance leve...
In this paper, we introduce a new concept, the time frame error rate. We show that this error rate i...
In the real environment, it is hard for a speech recog-nizer to avoid misrecognitions completely. Ho...
This research study aims to present a retrospective study about speech recognition systems and artif...
Dialogue promises a natural and effective method for users to interact with and obtain information f...
Making good letter or word predictions can help accelerate the communication of users of high-tech A...
The demand of intelligent machines that may recognize the spoken speech and respond in a natural vo...
Statistical spoken dialogue systems based on Partially Ob-servable Markov Decision Processes (POMDPs...
The paper describes the use of two recognizers fed by different acoustic features. The first recogni...
Statistical spoken dialogue systems based on Partially Observable Markov Decision Processes (POMDPs)...
We propose a simple yet effective method for improving speech recognition by reranking the N-best sp...
A recent trend in spoken dialogue research is the use of reinforcement learning to train dialogue sy...
The focus of this thesis proposal is to improve the ability of a computational system to understand ...
We propose a hypothesis reordering technique to improve speech recognition accuracy in a dialog syst...
This paper is an empirical study on the performance of different discriminative approaches to rerank...
The object function for Boosting training method in acoustic modeling aims to reduce utterance leve...
In this paper, we introduce a new concept, the time frame error rate. We show that this error rate i...
In the real environment, it is hard for a speech recog-nizer to avoid misrecognitions completely. Ho...
This research study aims to present a retrospective study about speech recognition systems and artif...
Dialogue promises a natural and effective method for users to interact with and obtain information f...
Making good letter or word predictions can help accelerate the communication of users of high-tech A...
The demand of intelligent machines that may recognize the spoken speech and respond in a natural vo...
Statistical spoken dialogue systems based on Partially Ob-servable Markov Decision Processes (POMDPs...
The paper describes the use of two recognizers fed by different acoustic features. The first recogni...
Statistical spoken dialogue systems based on Partially Observable Markov Decision Processes (POMDPs)...
We propose a simple yet effective method for improving speech recognition by reranking the N-best sp...
A recent trend in spoken dialogue research is the use of reinforcement learning to train dialogue sy...
The focus of this thesis proposal is to improve the ability of a computational system to understand ...