Applied Ontology, volume 19, issue 2, pages 113-142

Information extraction from automotive reports for ontology population

Publication typeJournal Article
Publication date2024-06-01
Journal: Applied Ontology
scimago Q1
SJR0.831
CiteScore4.8
Impact factor2.5
ISSN15705838, 18758533
General Computer Science
Linguistics and Language
Language and Linguistics
Abstract

In this paper, we showcase our research on the use of ontologies and information extraction for the purpose of modeling damages incurred on car bodies. With the increasing use of technology in the automotive industry, it is important to have a standardized and efficient way of documenting and analyzing car damage reports. Most existing reports are unstructured, and there is a lack of standardization in describing the damage. To address this issue, we have developed a domain ontology for car damage modeling ( OCD), 1 1 industryportal.enit.fr/ontologies/OCD , 2 2 github.com/OntologyCarDamage/OCD and proposed an end-to-end system to extract information from French automotive reports. The information extraction process involves using named entity recognition (NER) and relationship extraction (RE) techniques to identify and extract relevant information from the reports. Then, the extracted information is used to populate the [Formula: see text] ontology, allowing a structured and standardized representation of the damage information. The proposed system was tested on a real dataset of automotive reports and showed promising results.

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