As various engineering fields increasingly use modelling techniques, the number of provided models, their size, and their structural complexity increase. This makes model management, including finding these models, with state of the art very expensive computationally, i.e., leads to non-tractable graph comparison algorithms. To handle this problem, modelers can organize available models to be reused and overcome the development of the new and more complex models with less cost and effort. Therefore, we utilized a model classification using baseline machine learning approaches on a dataset including 555 Ecore metamodels. In our proposed system, the structural information of each model was summarized in its elements through generating their s...
In this paper, we exploit graph kernels for graph matching and clustering. Firstly, we analyze diffe...
Abstract. Computational models in open model repositories support biologists in understanding and in...
tion is a specialized program, often composed of a set of rules to transform models. The Model Trans...
Having a large collection of varied network graph data is significant for research findings. We have...
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...
Currently, there is no definitive method for classifying networks into distinct categories. The lead...
Several domains are inherently structural; relevant data cannot be represented as a single table wit...
Model comparison is an important challenge in model-driven engineering, with many application areas ...
Although graph matching is a fundamental problem in pattern recognition, and has drawn broad interes...
Structural identification using physics-based models and subsequent prediction have much potential t...
Although graph matching is a fundamental problem in pattern recognition, and has drawn broad interes...
Statistical machine learning algorithms building on patterns found by pattern mining algorithms have...
Engineering data, including product data-conversion networks and software dependency networks, are v...
In this paper, we exploit graph kernels for graph matching and clustering. Firstly, we analyze diffe...
Abstract. Computational models in open model repositories support biologists in understanding and in...
tion is a specialized program, often composed of a set of rules to transform models. The Model Trans...
Having a large collection of varied network graph data is significant for research findings. We have...
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...
Currently, there is no definitive method for classifying networks into distinct categories. The lead...
Several domains are inherently structural; relevant data cannot be represented as a single table wit...
Model comparison is an important challenge in model-driven engineering, with many application areas ...
Although graph matching is a fundamental problem in pattern recognition, and has drawn broad interes...
Structural identification using physics-based models and subsequent prediction have much potential t...
Although graph matching is a fundamental problem in pattern recognition, and has drawn broad interes...
Statistical machine learning algorithms building on patterns found by pattern mining algorithms have...
Engineering data, including product data-conversion networks and software dependency networks, are v...
In this paper, we exploit graph kernels for graph matching and clustering. Firstly, we analyze diffe...
Abstract. Computational models in open model repositories support biologists in understanding and in...
tion is a specialized program, often composed of a set of rules to transform models. The Model Trans...