• Corpus ID: 218630277

Towards NLP-supported Semantic Data Management

@article{Burgdorf2020TowardsNS,
  title={Towards NLP-supported Semantic Data Management},
  author={Andreas Burgdorf and Andr{\'e} Pomp and Tobias Meisen},
  journal={ArXiv},
  year={2020},
  volume={abs/2005.06916}
}
The heterogeneity of data poses a great challenge when data from different sources is to be merged for one application. Solutions for this are offered, for example, by ontology-based data management (OBDM). A challenge of OBDM is the automatic creation of semantic models from datasets. This process is typically performed either data- or label-driven and always involves manual human intervention. We identified textual descriptions of data, a form of metadata, quickly to be produced and consumed… 

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