We propose a novel connectionist method for the use of different feature sets in pattern classification. Unlike traditional methods, e.g., combination of multiple classifiers and use of a composite feature set, our method copes with the problem based on an idea of soft competition on different feature sets developed in our earlier work. An alternative modular neural network architecture is proposed to provide a more effective implementation of soft competition on different feature sets. The proposed architecture is interpreted as a generalized finite mixture model and, therefore, parameter estimation is treated as a maximum likelihood problem. An EM algorithm is derived for parameter estimation and, moreover, a model selection method is pro...
A hybrid architecture based upon Hidden Markov Models (HMMs) and Multilayer Feed-forward Neural Netw...
This book describes hybrid intelligent systems using type-2 fuzzy logic and modular neural networks ...
Abstract: A framework for Similarity-Based Methods (SBMs) includes many classification models as spe...
We propose an alternative method for the use of different feature sets in pattern classification. Un...
A novel connectionist method is proposed to simultaneously use diverse features in an optimal way fo...
A modular neural architecture, MME, is considered here as an alternative to the standard mixtures of...
A modular neural architecture, MME, is considered here as an alternative to the standard mixtures of...
A novel method is proposed for combining multiple probabilistic classifiers on different feature set...
An N-class problem can be fully decomposed into N independent small neural networks called modules (...
ABSTRACT Hidden Markov model speech recognition systems typically use Gaussian mixture models to est...
In this article, we consider the binary partitioned approach with pattern index information, propose...
Recently, a novel self-architecture modular neural network model called Modular Tree was proposed ba...
The purpose of this work is to compare statistical and connectionist techniques for patterns recogni...
We present a number of Time-Delay Neural Network (TDNN) based architectures for multi-speaker phonem...
Centre for Intelligent Systems and their ApplicationsThis thesis concerns the automatic generation o...
A hybrid architecture based upon Hidden Markov Models (HMMs) and Multilayer Feed-forward Neural Netw...
This book describes hybrid intelligent systems using type-2 fuzzy logic and modular neural networks ...
Abstract: A framework for Similarity-Based Methods (SBMs) includes many classification models as spe...
We propose an alternative method for the use of different feature sets in pattern classification. Un...
A novel connectionist method is proposed to simultaneously use diverse features in an optimal way fo...
A modular neural architecture, MME, is considered here as an alternative to the standard mixtures of...
A modular neural architecture, MME, is considered here as an alternative to the standard mixtures of...
A novel method is proposed for combining multiple probabilistic classifiers on different feature set...
An N-class problem can be fully decomposed into N independent small neural networks called modules (...
ABSTRACT Hidden Markov model speech recognition systems typically use Gaussian mixture models to est...
In this article, we consider the binary partitioned approach with pattern index information, propose...
Recently, a novel self-architecture modular neural network model called Modular Tree was proposed ba...
The purpose of this work is to compare statistical and connectionist techniques for patterns recogni...
We present a number of Time-Delay Neural Network (TDNN) based architectures for multi-speaker phonem...
Centre for Intelligent Systems and their ApplicationsThis thesis concerns the automatic generation o...
A hybrid architecture based upon Hidden Markov Models (HMMs) and Multilayer Feed-forward Neural Netw...
This book describes hybrid intelligent systems using type-2 fuzzy logic and modular neural networks ...
Abstract: A framework for Similarity-Based Methods (SBMs) includes many classification models as spe...