AbstractIn this paper, a new algorithm is presented for unsupervised learning of finite mixture models (FMMs) using data set with missing values. This algorithm overcomes the local optima problem of the Expectation-Maximization (EM) algorithm via integrating the EM algorithm with Particle Swarm Optimization (PSO). In addition, the proposed algorithm overcomes the problem of biased estimation due to overlapping clusters in estimating missing values in the input data set by integrating locally-tuned general regression neural networks with Optimal Completion Strategy (OCS). A comparison study shows the superiority of the proposed algorithm over other algorithms commonly used in the literature in unsupervised learning of FMM parameters that res...
AbstractIn this paper, an algorithm is proposed to learn and evaluate different finite mixture model...
This work introduces algorithms able to exploit contextual information in order to improve maximum-l...
Heterogeneity exists on a data set when samples from different classes are merged into the data set....
In this paper, a new algorithm is presented for unsupervised learning of finite mixture models (FMMs...
AbstractIn this paper, a new algorithm is presented for unsupervised learning of finite mixture mode...
AbstractIn this paper, an algorithm is proposed to integrate the unsupervised learning with the opti...
In this paper, an algorithm is proposed to integrate the unsupervised learning with the optimization...
AbstractFinite mixture models (FMM) is a well-known pattern recognition method, in which parameters ...
Real-world learning tasks often involve high-dimensional data sets with complex patterns of missing ...
There are two open problems when finite mixture densities are used to model multivariate data: the s...
Abstract—The Expectation Maximization (EM) algorithm is widely used for learning finite mixture mode...
We present solutions to two problems that prevent the effective use of population-based algorithms i...
Real-world learning tasks often involve high-dimensional data sets with complex patterns of missing...
: We consider the approach to unsupervised learning whereby a normal mixture model is fitted to the ...
In this paper, an algorithm is proposed to learn and evaluate different finite mixture models (FMMs)...
AbstractIn this paper, an algorithm is proposed to learn and evaluate different finite mixture model...
This work introduces algorithms able to exploit contextual information in order to improve maximum-l...
Heterogeneity exists on a data set when samples from different classes are merged into the data set....
In this paper, a new algorithm is presented for unsupervised learning of finite mixture models (FMMs...
AbstractIn this paper, a new algorithm is presented for unsupervised learning of finite mixture mode...
AbstractIn this paper, an algorithm is proposed to integrate the unsupervised learning with the opti...
In this paper, an algorithm is proposed to integrate the unsupervised learning with the optimization...
AbstractFinite mixture models (FMM) is a well-known pattern recognition method, in which parameters ...
Real-world learning tasks often involve high-dimensional data sets with complex patterns of missing ...
There are two open problems when finite mixture densities are used to model multivariate data: the s...
Abstract—The Expectation Maximization (EM) algorithm is widely used for learning finite mixture mode...
We present solutions to two problems that prevent the effective use of population-based algorithms i...
Real-world learning tasks often involve high-dimensional data sets with complex patterns of missing...
: We consider the approach to unsupervised learning whereby a normal mixture model is fitted to the ...
In this paper, an algorithm is proposed to learn and evaluate different finite mixture models (FMMs)...
AbstractIn this paper, an algorithm is proposed to learn and evaluate different finite mixture model...
This work introduces algorithms able to exploit contextual information in order to improve maximum-l...
Heterogeneity exists on a data set when samples from different classes are merged into the data set....