Publications des scientifiques de l'IRD

Mahrach L., Gutierrez A., Huchard M., Keip P., Marnotte P., Silvie Pierre, Martin P. (2021). Combining implications and conceptual analysis to learn from a pesticidal plant knowledge base. In : Braun T. (ed.), Gehrke M. (ed.), Hanika T. (ed.), Hernandez N. (ed.). Graph-based representation and reasoning. Cham : Springer, 57-72. (Lecture Notes in Computer Science ; 12879). ICCS.International Conference on Conceptual Structures, 26., En ligne, 2021/09/20-22. ISBN 978-3-030-86981-6.

Titre du document
Combining implications and conceptual analysis to learn from a pesticidal plant knowledge base
Année de publication
2021
Type de document
Article référencé dans le Web of Science WOS:000711894700005
Auteurs
Mahrach L., Gutierrez A., Huchard M., Keip P., Marnotte P., Silvie Pierre, Martin P.
In
Braun T. (ed.), Gehrke M. (ed.), Hanika T. (ed.), Hernandez N. (ed.), Graph-based representation and reasoning
Source
Cham : Springer, 2021, 57-72 (Lecture Notes in Computer Science ; 12879). ISBN 978-3-030-86981-6
Colloque
ICCS.International Conference on Conceptual Structures, 26., En ligne, 2021/09/20-22
Supporting organic farming aims to find alternative solutions to synthetic pesticides and antibiotics, using local plants, to protect crops. Moreover, in the One Health approach (OHA), a pesticidal plant should not be harmful to humans, meaning it cannot be toxic if the crop is consumed or should have a limited and conscious use if it is used for medical care. Knowledge on plant use presented in the scientific literature was compiled in a knowledge base (KB). The challenge is to develop a KB exploration method that informs experts (including farmers) about protection systems properties that respect OHA. In this paper, we present a method that extracts the Duquenne-Guigues basis of implications from knowledge structured using Relational Concept Analysis (RCA). We evaluate the impact of three data representations on the implications and their readability. The experimentation is conducted on 562 plant species used to protect 15 crops against 29 pest species of the Noctuidae family. Results show that consistently splitting data into several tables fosters less redundant and more focused implications.
Plan de classement
Divers [050DIVSAN] ; Ravageurs des plantes [076RAVPLA] ; Intelligence artificielle [122INTAR]
Localisation
Fonds IRD [F B010084434]
Identifiant IRD
fdi:010084434
Contact