Model comparison and clustering are important for dealing with many models in data analysis and exploration, e.g. in domain model recovery or model repository management. Particularly in structural models, information is captured not only in model elements (e.g. in names and types) but also in the structural context, i.e. the relation of one element to the others. Some approaches involve a large number of models ignoring the structural context of model elements; others handle very few (typically two) models applying sophisticated structural techniques. In this paper we address both aspects and extend our previous work on model clustering based on vector space model, with a technique for incorporating structural context in the form of n-gram...
Increasing model-driven engineering use leads to an abundance of models and metamodels in academic a...
While the vast majority of clustering algorithms are partitional, many real world datasets have inhe...
<p>(A) The dendrogram is obtained from the the Jaccard similarity that models have across the differ...
Model comparison and clustering are important for dealing with many models in data analysis and expl...
Many applications in Model-Driven Engineering involve processing multiple models or metamodels. A go...
Model comparison is an important challenge in model-driven engineering, with many application areas ...
In this paper we describe a word clustering method for class-based n-gram model. The measurement for...
In clustering, one may be interested in the classification of similar objects into groups, and one m...
As various engineering fields increasingly use modelling techniques, the number of provided models, ...
Increasing model-driven engineering use leads to an abundance of models and metamodels in academic a...
The problem of variable clustering is that of estimating groups of similar components of a p-dimensi...
Model-based co-clustering can be seen as a particularly valuable extension of model-based clustering...
Description We proposed a new model-based clustering method, called the clustering of regression mod...
Increasing model-driven engineering use leads to an abundance of models and metamodels in academic a...
While the vast majority of clustering algorithms are partitional, many real world datasets have inhe...
<p>(A) The dendrogram is obtained from the the Jaccard similarity that models have across the differ...
Model comparison and clustering are important for dealing with many models in data analysis and expl...
Many applications in Model-Driven Engineering involve processing multiple models or metamodels. A go...
Model comparison is an important challenge in model-driven engineering, with many application areas ...
In this paper we describe a word clustering method for class-based n-gram model. The measurement for...
In clustering, one may be interested in the classification of similar objects into groups, and one m...
As various engineering fields increasingly use modelling techniques, the number of provided models, ...
Increasing model-driven engineering use leads to an abundance of models and metamodels in academic a...
The problem of variable clustering is that of estimating groups of similar components of a p-dimensi...
Model-based co-clustering can be seen as a particularly valuable extension of model-based clustering...
Description We proposed a new model-based clustering method, called the clustering of regression mod...
Increasing model-driven engineering use leads to an abundance of models and metamodels in academic a...
While the vast majority of clustering algorithms are partitional, many real world datasets have inhe...
<p>(A) The dendrogram is obtained from the the Jaccard similarity that models have across the differ...