A novel method to improve the generalization performance of the Minimum Classification Error (MCE) / Generalized Probabilistic Descent (GPD) learning is proposed. The MCE/GPD learning proposed by Juang and Katagiri in 1992 results in better recognition performance than the maximum-likelihood (ML) based learning in various areas of pattern recognition. Despite its superiority in recognition performance, as well as other learning algorithms, it still suffers from the problem of "over-fitting" to the training samples. In the present study, a regularization technique has been employed to the MCE learning to overcome this problem. Feed-forward neural networks are employed as a recognition platform to evaluate the recognition performance of the ...
Abstract: Dimensionality reduction is an important problem in pattern recognition. In a speech recog...
Abstract. A method for training of an ML network for classification has been proposed by us in [3,4]...
This paper deals with supervised learning for classification. A new general purpose classifier is pr...
Abstract. A novel method to improve the generalization performance of the Minimum Classification Err...
A novel method to prevent the over-fitting effect and improve the generalization performance of the ...
Shigeru Katagiri and various co-authors have (re)introduced a nonstandard error mea-sure which can b...
The model training algorithm is a critical component in the statistical pattern recognition approach...
Dimensionality reduction is an important problem in pattern recognition. Reducing the dimensionality...
Speech Recognition is becoming more important in our daily life. Many applications are starting to u...
AbstractThe Minimum Classification Error (MCE) criterion is a well-known criterion in pattern classi...
Abstract—The minimum classification error (MCE) framework for discriminative training is a simple an...
During minimum-classification-error (MCE) training, competing hypotheses against the correct one are...
Discriminative training has become an important means for estimating model parameters in many statis...
In this paper, a novel methodology to reduce the generalization errors occurring due to domain shift...
The Minimum Classification Error (MCE) criterion is a well-known criterion in pattern classification...
Abstract: Dimensionality reduction is an important problem in pattern recognition. In a speech recog...
Abstract. A method for training of an ML network for classification has been proposed by us in [3,4]...
This paper deals with supervised learning for classification. A new general purpose classifier is pr...
Abstract. A novel method to improve the generalization performance of the Minimum Classification Err...
A novel method to prevent the over-fitting effect and improve the generalization performance of the ...
Shigeru Katagiri and various co-authors have (re)introduced a nonstandard error mea-sure which can b...
The model training algorithm is a critical component in the statistical pattern recognition approach...
Dimensionality reduction is an important problem in pattern recognition. Reducing the dimensionality...
Speech Recognition is becoming more important in our daily life. Many applications are starting to u...
AbstractThe Minimum Classification Error (MCE) criterion is a well-known criterion in pattern classi...
Abstract—The minimum classification error (MCE) framework for discriminative training is a simple an...
During minimum-classification-error (MCE) training, competing hypotheses against the correct one are...
Discriminative training has become an important means for estimating model parameters in many statis...
In this paper, a novel methodology to reduce the generalization errors occurring due to domain shift...
The Minimum Classification Error (MCE) criterion is a well-known criterion in pattern classification...
Abstract: Dimensionality reduction is an important problem in pattern recognition. In a speech recog...
Abstract. A method for training of an ML network for classification has been proposed by us in [3,4]...
This paper deals with supervised learning for classification. A new general purpose classifier is pr...