Integrated use of KOS and deep learning for data set annotation in tourism domain
ISSN: 0022-0418
Article publication date: 2 May 2023
Issue publication date: 24 October 2023
Abstract
Purpose
The purpose of this paper is to propose a methodology for the enrichment and tailoring of a knowledge organization system (KOS), in order to support the information extraction (IE) task for the analysis of documents in the tourism domain. In particular, the KOS is used to develop a named entity recognition (NER) system.
Design/methodology/approach
A method to improve and customize an available thesaurus by leveraging documents related to the tourism in Italy is firstly presented. Then, the obtained thesaurus is used to create an annotated NER corpus, exploiting both distant supervision, deep learning and a light human supervision.
Findings
The study shows that a customized KOS can effectively support IE tasks when applied to documents belonging to the same domains and types used for its construction. Moreover, it is very useful to support and ease the annotation task using the proposed methodology, allowing to annotate a corpus with a fraction of the effort required for a manual annotation.
Originality/value
The paper explores an alternative use of a KOS, proposing an innovative NER corpus annotation methodology. Moreover, the KOS and the annotated NER data set will be made publicly available.
Keywords
Acknowledgements
Authors have equally contributed to this work, however Giovanna Aracri particularly focused on “Introduction”, “Related Works” and “Conclusions and Future Works”; Antonietta Folino focused on “Motivations” and “Thesaurus construction”; Stefano Silvestri focused on “Iterative NER Corpus Annotation” “Experiments” and “Results and Discussion”.
Funding: The authors would like to acknowledge the financial support provided by POR Campania FESR 2014/2020, project STOP – “a Smart TOurism Platform”, Asse e Obiettivo: Asse 1 Ricerca e Innovazione - Obiettivo Specifico 1.1 Incremento dell’attività di innovazione delle imprese.
Citation
Aracri, G., Folino, A. and Silvestri, S. (2023), "Integrated use of KOS and deep learning for data set annotation in tourism domain", Journal of Documentation, Vol. 79 No. 6, pp. 1440-1458. https://doi.org/10.1108/JD-02-2023-0019
Publisher
:Emerald Publishing Limited
Copyright © 2023, Emerald Publishing Limited