In this paper, we investigate guided discriminative training in the context of improving multi-class classification problems. We are interested in applications that require improvement in the classification performance of only a subset of the classes at the possible expense of poorer classification performance of the remaining classes. However, should the classification of the remaining classes deteriorate, it is guaranteed not to be worse than the extent that the user specifies. The problem is formulated as a nonlinear programming problem, which can be translated to a unconstrained nonlinear optimization problem using the barrier method that, in turn, can be solved by gradient descent method. To prove the concept, we apply guided discrimin...
We investigate the recent Constrained Line Search algorithm for discriminative training of HMMs and ...
Discriminative training techniques for Hidden-Markov Models were recently proposed and successfully ...
In this book, we introduce the background and mainstream methods of probabilistic modeling and discr...
In this paper, we investigate guided discriminative training in the context of improving multi-class...
Discriminative training has been established as an effective technique for training the acoustic mod...
Although having revealed to be a very powerful tool in acoustic modelling, discriminative training p...
Linear discriminant analysis (LDA) is a simple and effective feature transformation technique that a...
A B S T R A C T This paper presents a linear programming approach to discriminative training. We fir...
In this paper, we cast discriminative training problems into standard linear programming (LP) optimi...
Discriminative model combination is a new approach in the field of automatic speech recognition, whi...
In automatic speech recognition, the decoding parameters — grammar factor and word insertion penalty...
In this work, a framework for efficient discriminative training and modeling is developed and implem...
Discriminative training has become an important means for estimating model parameters in many statis...
Discriminative training techniques for Hidden-Markov Models were recently proposed and successfully ...
In language identification and other speech applications, discriminatively trained models often outp...
We investigate the recent Constrained Line Search algorithm for discriminative training of HMMs and ...
Discriminative training techniques for Hidden-Markov Models were recently proposed and successfully ...
In this book, we introduce the background and mainstream methods of probabilistic modeling and discr...
In this paper, we investigate guided discriminative training in the context of improving multi-class...
Discriminative training has been established as an effective technique for training the acoustic mod...
Although having revealed to be a very powerful tool in acoustic modelling, discriminative training p...
Linear discriminant analysis (LDA) is a simple and effective feature transformation technique that a...
A B S T R A C T This paper presents a linear programming approach to discriminative training. We fir...
In this paper, we cast discriminative training problems into standard linear programming (LP) optimi...
Discriminative model combination is a new approach in the field of automatic speech recognition, whi...
In automatic speech recognition, the decoding parameters — grammar factor and word insertion penalty...
In this work, a framework for efficient discriminative training and modeling is developed and implem...
Discriminative training has become an important means for estimating model parameters in many statis...
Discriminative training techniques for Hidden-Markov Models were recently proposed and successfully ...
In language identification and other speech applications, discriminatively trained models often outp...
We investigate the recent Constrained Line Search algorithm for discriminative training of HMMs and ...
Discriminative training techniques for Hidden-Markov Models were recently proposed and successfully ...
In this book, we introduce the background and mainstream methods of probabilistic modeling and discr...