Increasing the generalization capability of Discriminative Training (DT) of Hidden Markov Models (HMM) has recently gained an increased interest within the speech recognition field. In particular, achieving such increases with only minor modifications to the existing DT method is of significant practical importance. In this paper, we propose a solution for increasing the generalization capability of a widely-used training method \u2013 the Minimum Classification Error (MCE) training of HMM \u2013 with limited changes to its original framework. For this, we define boundary data \u2013 obtained by applying a large steep parameter, and confusion data \u2013 obtained by applying a small steep parameter on the training samples, and then do a sof...
Abstract—We present a discriminative training algorithm, that uses support vector machines (SVMs), t...
In this work, motivated by large margin classifiers in machine learning, we propose a novel method t...
Hidden Markov Model (HMM) is a well-known classification approach which its parameters are conventio...
Discriminative training techniques for Hidden-Markov Models were recently proposed and successfully ...
Discriminative training techniques for Hidden-Markov Models were recently proposed and successfully ...
In this study we propose two methods to improve HMM speech recognition performance. The first method...
In this paper we introduce the Minimum Phone Error (MPE) and Minimum Word Error (MWE) criteria for t...
Abstract—Today’s speech recognition systems are based on hidden Markov models (HMMs) with Gaussian m...
Annotated speech corpora are indispensable to various areas of speech research. In this paper, we pr...
Abstract—The minimum classification error (MCE) framework for discriminative training is a simple an...
The parameters of the standard Hidden Markov Model frame-work for speech recognition are typically t...
Hidden Markov model (HMM) has been a popular mathematical approach for sequence classification such...
Hidden Markov Models (HMMs) are one of the most powerful speech recognition tools available today. E...
This paper introduces a method for regularization of HMM sys-tems that avoids parameter overfitting ...
Typically, parameter estimation for a hidden Markov model (HMM) is performed using an expectation-ma...
Abstract—We present a discriminative training algorithm, that uses support vector machines (SVMs), t...
In this work, motivated by large margin classifiers in machine learning, we propose a novel method t...
Hidden Markov Model (HMM) is a well-known classification approach which its parameters are conventio...
Discriminative training techniques for Hidden-Markov Models were recently proposed and successfully ...
Discriminative training techniques for Hidden-Markov Models were recently proposed and successfully ...
In this study we propose two methods to improve HMM speech recognition performance. The first method...
In this paper we introduce the Minimum Phone Error (MPE) and Minimum Word Error (MWE) criteria for t...
Abstract—Today’s speech recognition systems are based on hidden Markov models (HMMs) with Gaussian m...
Annotated speech corpora are indispensable to various areas of speech research. In this paper, we pr...
Abstract—The minimum classification error (MCE) framework for discriminative training is a simple an...
The parameters of the standard Hidden Markov Model frame-work for speech recognition are typically t...
Hidden Markov model (HMM) has been a popular mathematical approach for sequence classification such...
Hidden Markov Models (HMMs) are one of the most powerful speech recognition tools available today. E...
This paper introduces a method for regularization of HMM sys-tems that avoids parameter overfitting ...
Typically, parameter estimation for a hidden Markov model (HMM) is performed using an expectation-ma...
Abstract—We present a discriminative training algorithm, that uses support vector machines (SVMs), t...
In this work, motivated by large margin classifiers in machine learning, we propose a novel method t...
Hidden Markov Model (HMM) is a well-known classification approach which its parameters are conventio...