Semantic Annotation of Unstructured Documents Using Concepts Similarity

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Abstract

There is a large amount of information in the form of unstructured documents which pose challenges in the information storage, search, and retrieval. This situation has given rise to several information search approaches. Some proposals take into account the contextual meaning of the terms specified in the query. Semantic annotation technique can help to retrieve and extract information in unstructured documents. We propose a semantic annotation strategy for unstructured documents as part of a semantic search engine. In this proposal, ontologies are used to determine the context of the entities specified in the query. Our strategy for extracting the context is focused on concepts similarity. Each relevant term of the document is associated with an instance in the ontology. The similarity between each of the explicit relationships is measured through the combination of two types of associations: the association between each pair of concepts and the calculation of the weight of the relationships.

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Pech, F., Martinez, A., Estrada, H., & Hernandez, Y. (2017). Semantic Annotation of Unstructured Documents Using Concepts Similarity. Scientific Programming, 2017. https://doi.org/10.1155/2017/7831897

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