Inferring Types on Large Datasets Applying Ontology Class Hierarchy Classifiers: The DBpedia Case

Adding type information to resources belonging to large knowledge graphs is a challenging task, specially when considering those that are generated collaboratively, such as DBpedia, which usually contain errors and noise produced during the transformation process from different data sources. It is i...

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Bibliographic Details
Published inKnowledge Engineering and Knowledge Management Vol. 11313; pp. 322 - 337
Main Authors Rico, Mariano, Santana-Pérez, Idafen, Pozo-Jiménez, Pedro, Gómez-Pérez, Asunción
Format Book Chapter
LanguageEnglish
Published Switzerland Springer International Publishing AG 2018
Springer International Publishing
SeriesLecture Notes in Computer Science
Subjects
Online AccessGet full text

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Summary:Adding type information to resources belonging to large knowledge graphs is a challenging task, specially when considering those that are generated collaboratively, such as DBpedia, which usually contain errors and noise produced during the transformation process from different data sources. It is important to assign the correct type(s) to resources in order to efficiently exploit the information provided by the dataset. In this work we explore how machine learning classification models can be applied to solve this issue, relying on the information defined by the ontology class hierarchy. We have applied our approaches to DBpedia and compared to the state of the art, using a per-level analysis. We also define metrics to measure the quality of the results. Our results show that this approach is able to assign 56% more new types with higher precision and recall than the current DBpedia state of the art.
Bibliography:This work was partially funded by grant CAS18/00333 (Castillejo), and projects RTC-2016-4952-7 (esTA) and TIN2016-78011-C4-4-R (Datos 4.0), from the Spanish State Investigation Agency of the MINECO and FEDER Funds.
ISBN:9783030036669
3030036669
ISSN:0302-9743
1611-3349
DOI:10.1007/978-3-030-03667-6_21