2019
DOI: 10.1016/j.engappai.2018.11.001
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A logic-based relational learning approach to relation extraction: The OntoILPER system

Abstract: Relation Extraction (RE), the task of detecting and characterizing semantic relations between entities in text, has gained much importance in the last two decades, mainly in the biomedical domain. Many papers have been published on Relation Extraction using supervised machine learning techniques. Most of these techniques rely on statistical methods, such as feature-based and tree-kernels-based methods. Such statistical learning techniques are usually based on a propositional hypothesis space for representing e… Show more

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Cited by 10 publications
(4 citation statements)
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“…Different from , we propose to revisit the ED task as an ontology learning process, inspired by relation extraction (RE) tasks based on ontology and logic-based learning. Lima et al (2018Lima et al ( , 2019 present a logic-based relational learning approach to RE that uses inductive logic programming for generating information extraction (IE) models in the form of symbolic rules, demonstrating that ontology-based IE approaches are advantageous in capturing correlation among classes, and succeed in symbolic reasoning.…”
Section: Related Workmentioning
confidence: 99%
“…Different from , we propose to revisit the ED task as an ontology learning process, inspired by relation extraction (RE) tasks based on ontology and logic-based learning. Lima et al (2018Lima et al ( , 2019 present a logic-based relational learning approach to RE that uses inductive logic programming for generating information extraction (IE) models in the form of symbolic rules, demonstrating that ontology-based IE approaches are advantageous in capturing correlation among classes, and succeed in symbolic reasoning.…”
Section: Related Workmentioning
confidence: 99%
“…It applies several methods to extract entity-relations to the same piece of text and computes a level of confidence. Lima et al (2019) described a logic-based relational learning approach that uses inductive logic programming to learn symbolic extraction rules. It uses a domain ontology that guides the background knowledge generation process and is used for storing the extracted relation instances.…”
Section: Text Mining Systemsmentioning
confidence: 99%
“…Many entity-relation extractors (Etzioni et al, 2011;Velásquez et al, 2011;Yang and Soo, 2012;Vicient et al, 2013;Mitchell et al, 2015;Lima et al, 2019) and opinion miners (Perikos and Hatzilygeroudis, 2016;Jin et al, 2016a,b;Zhang et al, 2016;Pablos et al, 2018;Yoo et al, 2018;Ducange et al, 2019) have been analysed in this article. The conclusion is that they have a common problem: they do not take conditions into account.…”
Section: Introductionmentioning
confidence: 99%
“…The main contribution of this paper consists in the experimental validation of our working hypothesis that a feature engineering step composed by a substantial body of deep linguistic knowledge in combination with an expressive inductive learning technique can generate effective RE models. For testing this hypothesis, a LRL RE system (Lima et al, 2017;Lima et al, 2019) was used. The remainder of this section describes the RE system, the rich feature engineering component, and the underlying model for representing semantic features.…”
Section: Logical Relational Learning System For Relation Extractionmentioning
confidence: 99%