Fuster-Calvo Alexandre, Valentin Sarah, Tamayo William C., Gravel Dominique. 2025. Evaluating the feasibility of automating dataset retrieval for biodiversity monitoring. PeerJ, 13:e18853, 22 p.
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- Anglais
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Url - autres données associées : https://github.com/Alex-Fuster/automated_datset_retrieval.git
Résumé : Aim: Effective management strategies for conserving biodiversity and mitigating the impacts of global change rely on access to comprehensive and up-to-date biodiversity data. However, manual search, retrieval, evaluation, and integration of this information into databases present a significant challenge to keeping pace with the rapid influx of large amounts of data, hindering its utility in contemporary decision-making processes. Automating these tasks through advanced algorithms holds immense potential to revolutionize biodiversity monitoring. Innovation: In this study, we investigate the potential for automating the retrieval and evaluation of biodiversity data from Dryad and Zenodo repositories. We have designed an evaluation system based on various criteria, including the type of data provided and its spatio-temporal range, and applied it to manually assess the relevance for biodiversity monitoring of datasets retrieved through an application programming interface (API). We evaluated a supervised classification to identify potentially relevant datasets and investigate the feasibility of automatically ranking the relevance. Additionally, we applied the same appraoch on a scientific literature source, using data from Semantic Scholar for reference. Our evaluation centers on the database utilized by a national biodiversity monitoring system in Quebec, Canada. Main conclusions: We retrieved 89 (55%) relevant datasets for our database, showing the value of automated dataset search in repositories. Additionally, we find that scientific publication sources offer broader temporal coverage and can serve as conduits guiding researchers toward other valuable data sources. Our automated classification system showed moderate performance in detecting relevant datasets (with an F-score up to 0.68) and signs of overfitting, emphasizing the need for further refinement. A key challenge identified in our manual evaluation is the scarcity and uneven distribution of metadata in the texts, especially pertaining to spatial and temporal extents. Our evaluative framework, based on predefined criteria, can be adopted by automated algorithms for streamlined prioritization, and we make our manually evaluated data publicly available, serving as a benchmark for improving classification techniques.
Mots-clés Agrovoc : biodiversité, recherche de l'information, traitement des données, banque de données, conservation de la diversité biologique, analyse de données, apprentissage machine, intelligence artificielle
Mots-clés géographiques Agrovoc : Québec
Mots-clés libres : Automated data retrieval, Data repository, Biodiversity monitoring, Machine Learning, Ecological data
Agences de financement hors UE : National Science and Engineering Research Council
Auteurs et affiliations
- Fuster-Calvo Alexandre, Université de Sherbrooke (CAN) - auteur correspondant
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Valentin Sarah, CIRAD-ES-UMR TETIS (FRA)
ORCID: 0000-0002-9028-681X
- Tamayo William C., Université de Sherbrooke (CAN)
- Gravel Dominique, Université de Sherbrooke (CAN)
Source : Cirad-Agritrop (https://agritrop.cirad.fr/611996/)
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