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Embedding-Based Recommendations on Scholarly Knowledge Graphs

The increasing availability of scholarly metadata in the form of Knowledge Graphs (KG) offers opportunities for studying the structure of scholarly communication and evolution of science. Such KGs build the foundation for knowledge-driven tasks e.g., link discovery, prediction and entity classificat...

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Autores principales: Nayyeri, Mojtaba, Vahdati, Sahar, Zhou, Xiaotian, Shariat Yazdi, Hamed, Lehmann, Jens
Formato: Online Artículo Texto
Lenguaje:English
Publicado: 2020
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC7250594/
http://dx.doi.org/10.1007/978-3-030-49461-2_15
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author Nayyeri, Mojtaba
Vahdati, Sahar
Zhou, Xiaotian
Shariat Yazdi, Hamed
Lehmann, Jens
author_facet Nayyeri, Mojtaba
Vahdati, Sahar
Zhou, Xiaotian
Shariat Yazdi, Hamed
Lehmann, Jens
author_sort Nayyeri, Mojtaba
collection PubMed
description The increasing availability of scholarly metadata in the form of Knowledge Graphs (KG) offers opportunities for studying the structure of scholarly communication and evolution of science. Such KGs build the foundation for knowledge-driven tasks e.g., link discovery, prediction and entity classification which allow to provide recommendation services. Knowledge graph embedding (KGE) models have been investigated for such knowledge-driven tasks in different application domains. One of the applications of KGE models is to provide link predictions, which can also be viewed as a foundation for recommendation service, e.g. high confidence “co-author” links in a scholarly knowledge graph can be seen as suggested collaborations. In this paper, KGEs are reconciled with a specific loss function (Soft Margin) and examined with respect to their performance for co-authorship link prediction task on scholarly KGs. The results show a significant improvement in the accuracy of the experimented KGE models on the considered scholarly KGs using this specific loss. TransE with Soft Margin (TransE-SM) obtains a score of 79.5% Hits@10 for co-authorship link prediction task while the original TransE obtains 77.2%, on the same task. In terms of accuracy and Hits@10, TransE-SM also outperforms other state-of-the-art embedding models such as ComplEx, ConvE and RotatE in this setting. The predicted co-authorship links have been validated by evaluating profile of scholars.
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spelling pubmed-72505942020-05-27 Embedding-Based Recommendations on Scholarly Knowledge Graphs Nayyeri, Mojtaba Vahdati, Sahar Zhou, Xiaotian Shariat Yazdi, Hamed Lehmann, Jens The Semantic Web Article The increasing availability of scholarly metadata in the form of Knowledge Graphs (KG) offers opportunities for studying the structure of scholarly communication and evolution of science. Such KGs build the foundation for knowledge-driven tasks e.g., link discovery, prediction and entity classification which allow to provide recommendation services. Knowledge graph embedding (KGE) models have been investigated for such knowledge-driven tasks in different application domains. One of the applications of KGE models is to provide link predictions, which can also be viewed as a foundation for recommendation service, e.g. high confidence “co-author” links in a scholarly knowledge graph can be seen as suggested collaborations. In this paper, KGEs are reconciled with a specific loss function (Soft Margin) and examined with respect to their performance for co-authorship link prediction task on scholarly KGs. The results show a significant improvement in the accuracy of the experimented KGE models on the considered scholarly KGs using this specific loss. TransE with Soft Margin (TransE-SM) obtains a score of 79.5% Hits@10 for co-authorship link prediction task while the original TransE obtains 77.2%, on the same task. In terms of accuracy and Hits@10, TransE-SM also outperforms other state-of-the-art embedding models such as ComplEx, ConvE and RotatE in this setting. The predicted co-authorship links have been validated by evaluating profile of scholars. 2020-05-07 /pmc/articles/PMC7250594/ http://dx.doi.org/10.1007/978-3-030-49461-2_15 Text en © Springer Nature Switzerland AG 2020 This article is made available via the PMC Open Access Subset for unrestricted research re-use and secondary analysis in any form or by any means with acknowledgement of the original source. These permissions are granted for the duration of the World Health Organization (WHO) declaration of COVID-19 as a global pandemic.
spellingShingle Article
Nayyeri, Mojtaba
Vahdati, Sahar
Zhou, Xiaotian
Shariat Yazdi, Hamed
Lehmann, Jens
Embedding-Based Recommendations on Scholarly Knowledge Graphs
title Embedding-Based Recommendations on Scholarly Knowledge Graphs
title_full Embedding-Based Recommendations on Scholarly Knowledge Graphs
title_fullStr Embedding-Based Recommendations on Scholarly Knowledge Graphs
title_full_unstemmed Embedding-Based Recommendations on Scholarly Knowledge Graphs
title_short Embedding-Based Recommendations on Scholarly Knowledge Graphs
title_sort embedding-based recommendations on scholarly knowledge graphs
topic Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC7250594/
http://dx.doi.org/10.1007/978-3-030-49461-2_15
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