Time-aware and corpus-specific entity relatedness

Research output: Chapter in book/report/conference proceedingConference contributionResearchpeer review

Authors

  • Nilamadhaba Mohapatra
  • Vasileios Iosifidis
  • Asif Ekbal
  • Stefan Dietze
  • Pavlos Fafalios

Research Organisations

External Research Organisations

  • Indian Institute of Technology Patna (IITP)
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Details

Original languageEnglish
Title of host publicationWorkshop on Deep Learning for Knowledge Graphs and Semantic Technologies 2018
Subtitle of host publicationProceedings 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)
Pages33-39
Number of pages7
Publication statusPublished - 2018
Event1st Workshop on Deep Learning for Knowledge Graphs and Semantic Technologies, DL4KGS 2018 - Heraklion, Crete, Greece
Duration: 4 Jun 20184 Jun 2018

Publication series

NameCEUR Workshop Proceedings
PublisherCEUR Workshop Proceedings
Volume2106
ISSN (Print)1613-0073

Abstract

Entity relatedness has emerged as an important feature in a plethora of applications such as information retrieval, entity recommendation and entity linking. Given an entity, for instance a person or an organization, entity relatedness measures can be exploited for generating a list of highly-related entities. However, the relation of an entity to some other entity depends on several factors, with time and context being two of the most important ones (where, in our case, context is determined by a particular corpus). For example, the entities related to the International Monetary Fund are different now compared to some years ago, while these entities also may highly differ in the context of a USA news portal compared to a Greek news portal. In this paper, we propose a simple but exible model for entity relatedness which considers time and entity aware word embeddings by exploiting the underlying corpus. The proposed model does not require external knowledge and is language independent, which makes it widely useful in a variety of applications.

Keywords

    Entity Embeddings, Entity Relatedness, Word2Vec

ASJC Scopus subject areas

Cite this

Time-aware and corpus-specific entity relatedness. / Mohapatra, Nilamadhaba; Iosifidis, Vasileios; Ekbal, Asif et al.
Workshop on Deep Learning for Knowledge Graphs and Semantic Technologies 2018: 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. p. 33-39 (CEUR Workshop Proceedings; Vol. 2106).

Research output: Chapter in book/report/conference proceedingConference contributionResearchpeer review

Mohapatra, N, Iosifidis, V, Ekbal, A, Dietze, S & Fafalios, P 2018, Time-aware and corpus-specific entity relatedness. in Workshop on Deep Learning for Knowledge Graphs and Semantic Technologies 2018: 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). CEUR Workshop Proceedings, vol. 2106, pp. 33-39, 1st Workshop on Deep Learning for Knowledge Graphs and Semantic Technologies, DL4KGS 2018, Heraklion, Crete, Greece, 4 Jun 2018. <https://ceur-ws.org/Vol-2106/paper4.pdf>
Mohapatra, N., Iosifidis, V., Ekbal, A., Dietze, S., & Fafalios, P. (2018). Time-aware and corpus-specific entity relatedness. In Workshop on Deep Learning for Knowledge Graphs and Semantic Technologies 2018: 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. 33-39). (CEUR Workshop Proceedings; Vol. 2106). https://ceur-ws.org/Vol-2106/paper4.pdf
Mohapatra N, Iosifidis V, Ekbal A, Dietze S, Fafalios P. Time-aware and corpus-specific entity relatedness. In Workshop on Deep Learning for Knowledge Graphs and Semantic Technologies 2018: 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. p. 33-39. (CEUR Workshop Proceedings).
Mohapatra, Nilamadhaba ; Iosifidis, Vasileios ; Ekbal, Asif et al. / Time-aware and corpus-specific entity relatedness. Workshop on Deep Learning for Knowledge Graphs and Semantic Technologies 2018: 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. pp. 33-39 (CEUR Workshop Proceedings).
Download
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abstract = "Entity relatedness has emerged as an important feature in a plethora of applications such as information retrieval, entity recommendation and entity linking. Given an entity, for instance a person or an organization, entity relatedness measures can be exploited for generating a list of highly-related entities. However, the relation of an entity to some other entity depends on several factors, with time and context being two of the most important ones (where, in our case, context is determined by a particular corpus). For example, the entities related to the International Monetary Fund are different now compared to some years ago, while these entities also may highly differ in the context of a USA news portal compared to a Greek news portal. In this paper, we propose a simple but exible model for entity relatedness which considers time and entity aware word embeddings by exploiting the underlying corpus. The proposed model does not require external knowledge and is language independent, which makes it widely useful in a variety of applications.",
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AU - Dietze, Stefan

AU - Fafalios, Pavlos

N1 - Funding information: The work was partially funded by the European Commission for the ERC Advanced Grant ALEXANDRIA under grant No. 339233.

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AB - Entity relatedness has emerged as an important feature in a plethora of applications such as information retrieval, entity recommendation and entity linking. Given an entity, for instance a person or an organization, entity relatedness measures can be exploited for generating a list of highly-related entities. However, the relation of an entity to some other entity depends on several factors, with time and context being two of the most important ones (where, in our case, context is determined by a particular corpus). For example, the entities related to the International Monetary Fund are different now compared to some years ago, while these entities also may highly differ in the context of a USA news portal compared to a Greek news portal. In this paper, we propose a simple but exible model for entity relatedness which considers time and entity aware word embeddings by exploiting the underlying corpus. The proposed model does not require external knowledge and is language independent, which makes it widely useful in a variety of applications.

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