Corpus ID: 237592840

Graph type expressivity and transformations

@article{Thomas2021GraphTE,
  title={Graph type expressivity and transformations},
  author={Josephine M. Thomas and Silvia Beddar-Wiesing and Alice Moallemy-Oureh and R. D. Nather},
  journal={ArXiv},
  year={2021},
  volume={abs/2109.10708}
}
Graph representations have gained importance in almost every scientific field, ranging from mathematics, biology, social sciences and physics to computer science. In contrast to other data formats, graphs propose the possibility to model relations between entities. Together with the continuously rising amount of available data, graphs therefore open up a wide range of modeling capabilities for theoretical and real-world problems. However, the modeling possibilities of graphs have not been fully… Expand

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