Knowledge Graphs (KGs) are abstractions used to represent knowledge in which real-world entities are organized using a type system where types are organized using a sub-type relation: the ontology. A key factor in many applications is to evaluate the similarity between the types of the ontology. Classical measures to evaluate the semantic similarity between types are often based on the structured organization of the sub-type system. In this work, we show that it is possible to use methods coming from Natural Language Processing to embed types in a vector space starting from textual documents. We show that in this representation some of the properties of the hierarchy are still present and that the similarity in this space captures also characteristics that are close to human behavior.

Bianchi, F., Soto, M., Palmonari, M., Cutrona, V. (2018). Type vector representations from text: An empirical analysis. In Proceedings of the First Workshop on Deep Learning for Knowledge Graphs and Semantic Technologies (DL4KGS) co-located with the 15th Extended Semantic Web Conerence (ESWC 2018) (pp.72-83). CEUR-WS.

Type vector representations from text: An empirical analysis

Bianchi F.;Palmonari M.;Cutrona V.
2018

Abstract

Knowledge Graphs (KGs) are abstractions used to represent knowledge in which real-world entities are organized using a type system where types are organized using a sub-type relation: the ontology. A key factor in many applications is to evaluate the similarity between the types of the ontology. Classical measures to evaluate the semantic similarity between types are often based on the structured organization of the sub-type system. In this work, we show that it is possible to use methods coming from Natural Language Processing to embed types in a vector space starting from textual documents. We show that in this representation some of the properties of the hierarchy are still present and that the similarity in this space captures also characteristics that are close to human behavior.
paper
embeddings, artificial intelligence, knowledge graphs
English
1st Workshop on Deep Learning for Knowledge Graphs and Semantic Technologies, DL4KGS 2018 - June 4, 2018
2018
Cochez, M; Declerck, T; de Melo, G; Espinosa Anke, L; Fetahu, B; Gromann, D; Kejriwal, M; Koutraki, M; Lecue, F; Palumbo, E; Sack, H
Proceedings of the First Workshop on Deep Learning for Knowledge Graphs and Semantic Technologies (DL4KGS) co-located with the 15th Extended Semantic Web Conerence (ESWC 2018)
2018
2106
72
83
https://ceur-ws.org/Vol-2106/
none
Bianchi, F., Soto, M., Palmonari, M., Cutrona, V. (2018). Type vector representations from text: An empirical analysis. In Proceedings of the First Workshop on Deep Learning for Knowledge Graphs and Semantic Technologies (DL4KGS) co-located with the 15th Extended Semantic Web Conerence (ESWC 2018) (pp.72-83). CEUR-WS.
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/10281/462599
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