A novel neural network clustering algorithm, CoRe, is benchmarked against previously published results on a breast cancer data set and applying the method of Partition Around Medoids (PAM). The data serve to compare the samples partitions obtained with the neural network, PAM and model-based algorithms, namely Gaussian Mixture Model (GMM), Variational Bayesian Gaussian Mixture (VBG) and Variational Bayesian Mixtures with Splitting (VBS). It is found that CoRe, on the one hand, agrees with the previously published partitions; on the other hand, it supports the existence of a supplementary cluster that we hypothesize to be an additional tumor subgroup with respect to those previously identified by PAM
The following full text is a publisher's version. For additional information about this publica...
Integrative clustering is used to identify groups of samples by jointly analysing multiple datasets ...
Although training an ensemble of neural network solutions increases the amount of information obtain...
Clustering issues are fundamental to exploratory analysis of bioinformatics data. This process may f...
Finding subtypes of heterogeneous diseases is the biggest challenge in the area of biology. Often, c...
Summary: LOVE, a robust, scalable latent model-based clustering method for biological discovery, can...
There are many algorithms to cluster sample data points based on nearness or a similar-ity measure. ...
In many fields, researchers are confronted by datasets whose variables demonstrate grouping patterns...
This paper evaluates the impact of multiple clusters on neural classification of regions of interest...
Abstract Clustering issues are fundamental to explor-atory analysis of bioinformatics data. This pro...
While the vast majority of clustering algorithms are partitional, many real world datasets have inhe...
Clustering techniques have been applied to neuroscience data analysis for decades. New algorithms ke...
. k-Means clustering algorithm is an unsupervised learning, provides no opportunity for a data poin...
Cluster analyses are often conducted with the goal to characterize an underlying probability density...
Cluster analysis of biological samples using gene expression measurements is a common task which aid...
The following full text is a publisher's version. For additional information about this publica...
Integrative clustering is used to identify groups of samples by jointly analysing multiple datasets ...
Although training an ensemble of neural network solutions increases the amount of information obtain...
Clustering issues are fundamental to exploratory analysis of bioinformatics data. This process may f...
Finding subtypes of heterogeneous diseases is the biggest challenge in the area of biology. Often, c...
Summary: LOVE, a robust, scalable latent model-based clustering method for biological discovery, can...
There are many algorithms to cluster sample data points based on nearness or a similar-ity measure. ...
In many fields, researchers are confronted by datasets whose variables demonstrate grouping patterns...
This paper evaluates the impact of multiple clusters on neural classification of regions of interest...
Abstract Clustering issues are fundamental to explor-atory analysis of bioinformatics data. This pro...
While the vast majority of clustering algorithms are partitional, many real world datasets have inhe...
Clustering techniques have been applied to neuroscience data analysis for decades. New algorithms ke...
. k-Means clustering algorithm is an unsupervised learning, provides no opportunity for a data poin...
Cluster analyses are often conducted with the goal to characterize an underlying probability density...
Cluster analysis of biological samples using gene expression measurements is a common task which aid...
The following full text is a publisher's version. For additional information about this publica...
Integrative clustering is used to identify groups of samples by jointly analysing multiple datasets ...
Although training an ensemble of neural network solutions increases the amount of information obtain...